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Wikipedia

JPEG

JPEG (/ˈpɛɡ/ JAY-peg)[2] is a commonly used method of lossy compression for digital images, particularly for those images produced by digital photography. The degree of compression can be adjusted, allowing a selectable tradeoff between storage size and image quality. JPEG typically achieves 10:1 compression with little perceptible loss in image quality.[3] Since its introduction in 1992, JPEG has been the most widely used image compression standard in the world,[4][5] and the most widely used digital image format, with several billion JPEG images produced every day as of 2015.[6]

JPEG
A photo of a European wildcat with the compression rate decreasing and hence quality increasing, from left to right
Filename extension
.jpg, .jpeg, .jpe
.jif, .jfif, .jfi
Internet media type
image/jpeg
Type codeJPEG
Uniform Type Identifier (UTI)public.jpeg
Magic numberff d8 ff
Developed byJoint Photographic Experts Group, IBM, Mitsubishi Electric, AT&T, Canon Inc.[1]
Initial releaseSeptember 18, 1992; 30 years ago (1992-09-18)
Type of formatLossy image compression format
Extended toJPEG 2000
StandardISO/IEC 10918, ITU-T T.81, ITU-T T.83, ITU-T T.84, ITU-T T.86
Websitejpeg.org/jpeg/
Continuously varied JPEG compression (between Q=100 and Q=1) for an abdominal CT scan

The term "JPEG" is an acronym for the Joint Photographic Experts Group, which created the standard in 1992.[7] JPEG was largely responsible for the proliferation of digital images and digital photos across the Internet and later social media.[8]

JPEG compression is used in a number of image file formats. JPEG/Exif is the most common image format used by digital cameras and other photographic image capture devices; along with JPEG/JFIF, it is the most common format for storing and transmitting photographic images on the World Wide Web.[9] These format variations are often not distinguished and are simply called JPEG.

The MIME media type for JPEG is "image/jpeg," except in older Internet Explorer versions, which provide a MIME type of "image/pjpeg" when uploading JPEG images.[10] JPEG files usually have a filename extension of "jpg" or "jpeg." JPEG/JFIF supports a maximum image size of 65,535×65,535 pixels,[11] hence up to 4 gigapixels for an aspect ratio of 1:1. In 2000, the JPEG group introduced a format intended to be a successor, JPEG 2000, but it was unable to replace the original JPEG as the dominant image standard.[12]

History

Background

The original JPEG specification published in 1992 implements processes from various earlier research papers and patents cited by the CCITT (now ITU-T) and Joint Photographic Experts Group.[1]

The JPEG specification cites patents from several companies. The following patents provided the basis for its arithmetic coding algorithm.[1]

  • IBM
    • U.S. Patent 4,652,856 – February 4, 1986 – Kottappuram M. A. Mohiuddin and Jorma J. Rissanen – Multiplication-free multi-alphabet arithmetic code
    • U.S. Patent 4,905,297 – February 27, 1990 – G. Langdon, J.L. Mitchell, W.B. Pennebaker, and Jorma J. Rissanen – Arithmetic coding encoder and decoder system
    • U.S. Patent 4,935,882 – June 19, 1990 – W.B. Pennebaker and J.L. Mitchell – Probability adaptation for arithmetic coders
  • Mitsubishi Electric
    • JP H02202267  (1021672) – January 21, 1989 – Toshihiro Kimura, Shigenori Kino, Fumitaka Ono, Masayuki Yoshida – Coding system
    • JP H03247123  (2-46275) – February 26, 1990 – Fumitaka Ono, Tomohiro Kimura, Masayuki Yoshida, and Shigenori Kino – Coding apparatus and coding method

The JPEG specification also cites three other patents from IBM. Other companies cited as patent holders include AT&T (two patents) and Canon Inc.[1] Absent from the list is U.S. Patent 4,698,672, filed by Compression Labs' Wen-Hsiung Chen and Daniel J. Klenke in October 1986. The patent describes a DCT-based image compression algorithm, and would later be a cause of controversy in 2002 (see Patent controversy below).[13] However, the JPEG specification did cite two earlier research papers by Wen-Hsiung Chen, published in 1977 and 1984.[1]

JPEG standard

"JPEG" stands for Joint Photographic Experts Group, the name of the committee that created the JPEG standard and also other still picture coding standards. The "Joint" stood for ISO TC97 WG8 and CCITT SGVIII. Founded in 1986, the group developed the JPEG standard during the late 1980s. The group published the JPEG standard in 1992.[4]

In 1987, ISO TC 97 became ISO/IEC JTC 1 and, in 1992, CCITT became ITU-T. Currently on the JTC1 side, JPEG is one of two sub-groups of ISO/IEC Joint Technical Committee 1, Subcommittee 29, Working Group 1 (ISO/IEC JTC 1/SC 29/WG 1) – titled as Coding of still pictures.[14][15][16] On the ITU-T side, ITU-T SG16 is the respective body. The original JPEG Group was organized in 1986,[17] issuing the first JPEG standard in 1992, which was approved in September 1992 as ITU-T Recommendation T.81[18] and, in 1994, as ISO/IEC 10918-1.

The JPEG standard specifies the codec, which defines how an image is compressed into a stream of bytes and decompressed back into an image, but not the file format used to contain that stream.[19] The Exif and JFIF standards define the commonly used file formats for interchange of JPEG-compressed images.

JPEG standards are formally named as Information technology – Digital compression and coding of continuous-tone still images. ISO/IEC 10918 consists of the following parts:

Digital compression and coding of continuous-tone still images – Parts[15][17][20]
Part ISO/IEC standard ITU-T Rec. First public release date Latest amendment Title Description
Part 1 ISO/IEC 10918-1:1994 T.81 (09/92) Sep 18, 1992 Requirements and guidelines
Part 2 ISO/IEC 10918-2:1995 T.83 (11/94) Nov 11, 1994 Compliance testing Rules and checks for software conformance (to Part 1).
Part 3 ISO/IEC 10918-3:1997 T.84 (07/96) Jul 3, 1996 Apr 1, 1999 Extensions Set of extensions to improve the Part 1, including the Still Picture Interchange File Format (SPIFF).[21]
Part 4 ISO/IEC 10918-4:1999 T.86 (06/98) Jun 18, 1998 Jun 29, 2012 Registration of JPEG profiles, SPIFF profiles, SPIFF tags, SPIFF colour spaces, APPn markers, SPIFF compression types and Registration Authorities (REGAUT) methods for registering some of the parameters used to extend JPEG
Part 5 ISO/IEC 10918-5:2013 T.871 (05/11) May 14, 2011 JPEG File Interchange Format (JFIF) A popular format which has been the de facto file format for images encoded by the JPEG standard. In 2009, the JPEG Committee formally established an Ad Hoc Group to standardize JFIF as JPEG Part 5.[22]
Part 6 ISO/IEC 10918-6:2013 T.872 (06/12) Jun 2012 Application to printing systems Specifies a subset of features and application tools for the interchange of images encoded according to the ISO/IEC 10918-1 for printing.
Part 7 ISO/IEC 10918-7:2021 T.873 (06/21) May 2019 June 2021 Reference Software Provides reference implementations of the JPEG core coding system

Ecma International TR/98 specifies the JPEG File Interchange Format (JFIF); the first edition was published in June 2009.[23]

Patent controversy

In 2002, Forgent Networks asserted that it owned and would enforce patent rights on the JPEG technology, arising from a patent that had been filed on October 27, 1986, and granted on October 6, 1987: U.S. Patent 4,698,672 by Compression Labs' Wen-Hsiung Chen and Daniel J. Klenke.[13][24] While Forgent did not own Compression Labs at the time, Chen later sold Compression Labs to Forgent, before Chen went on to work for Cisco. This led to Forgent acquiring ownership over the patent.[13] Forgent's 2002 announcement created a furor reminiscent of Unisys' attempts to assert its rights over the GIF image compression standard.

The JPEG committee investigated the patent claims in 2002 and were of the opinion that they were invalidated by prior art,[25] a view shared by various experts.[13][26]

Between 2002 and 2004, Forgent was able to obtain about US$105 million by licensing their patent to some 30 companies. In April 2004, Forgent sued 31 other companies to enforce further license payments. In July of the same year, a consortium of 21 large computer companies filed a countersuit, with the goal of invalidating the patent. In addition, Microsoft launched a separate lawsuit against Forgent in April 2005.[27] In February 2006, the United States Patent and Trademark Office agreed to re-examine Forgent's JPEG patent at the request of the Public Patent Foundation.[28] On May 26, 2006, the USPTO found the patent invalid based on prior art. The USPTO also found that Forgent knew about the prior art, yet it intentionally avoided telling the Patent Office. This makes any appeal to reinstate the patent highly unlikely to succeed.[29]

Forgent also possesses a similar patent granted by the European Patent Office in 1994, though it is unclear how enforceable it is.[30]

As of October 27, 2006, the U.S. patent's 20-year term appears to have expired, and in November 2006, Forgent agreed to abandon enforcement of patent claims against use of the JPEG standard.[31]

The JPEG committee has as one of its explicit goals that their standards (in particular their baseline methods) be implementable without payment of license fees, and they have secured appropriate license rights for their JPEG 2000 standard from over 20 large organizations.

Beginning in August 2007, another company, Global Patent Holdings, LLC claimed that its patent (U.S. Patent 5,253,341) issued in 1993, is infringed by the downloading of JPEG images on either a website or through e-mail. If not invalidated, this patent could apply to any website that displays JPEG images. The patent was under reexamination by the U.S. Patent and Trademark Office from 2000 to 2007; in July 2007, the Patent Office revoked all of the original claims of the patent but found that an additional claim proposed by Global Patent Holdings (claim 17) was valid.[32] Global Patent Holdings then filed a number of lawsuits based on claim 17 of its patent.

In its first two lawsuits following the reexamination, both filed in Chicago, Illinois, Global Patent Holdings sued the Green Bay Packers, CDW, Motorola, Apple, Orbitz, Officemax, Caterpillar, Kraft and Peapod as defendants. A third lawsuit was filed on December 5, 2007, in South Florida against ADT Security Services, AutoNation, Florida Crystals Corp., HearUSA, MovieTickets.com, Ocwen Financial Corp. and Tire Kingdom, and a fourth lawsuit on January 8, 2008, in South Florida against the Boca Raton Resort & Club. A fifth lawsuit was filed against Global Patent Holdings in Nevada. That lawsuit was filed by Zappos.com, Inc., which was allegedly threatened by Global Patent Holdings, and sought a judicial declaration that the '341 patent is invalid and not infringed.

Global Patent Holdings had also used the '341 patent to sue or threaten outspoken critics of broad software patents, including Gregory Aharonian[33] and the anonymous operator of a website blog known as the "Patent Troll Tracker."[34] On December 21, 2007, patent lawyer Vernon Francissen of Chicago asked the U.S. Patent and Trademark Office to reexamine the sole remaining claim of the '341 patent on the basis of new prior art.[35]

On March 5, 2008, the U.S. Patent and Trademark Office agreed to reexamine the '341 patent, finding that the new prior art raised substantial new questions regarding the patent's validity.[36] In light of the reexamination, the accused infringers in four of the five pending lawsuits have filed motions to suspend (stay) their cases until completion of the U.S. Patent and Trademark Office's review of the '341 patent. On April 23, 2008, a judge presiding over the two lawsuits in Chicago, Illinois granted the motions in those cases.[37] On July 22, 2008, the Patent Office issued the first "Office Action" of the second reexamination, finding the claim invalid based on nineteen separate grounds.[38] On Nov. 24, 2009, a Reexamination Certificate was issued cancelling all claims.

Beginning in 2011 and continuing as of early 2013, an entity known as Princeton Digital Image Corporation,[39] based in Eastern Texas, began suing large numbers of companies for alleged infringement of U.S. Patent 4,813,056. Princeton claims that the JPEG image compression standard infringes the '056 patent and has sued large numbers of websites, retailers, camera and device manufacturers and resellers. The patent was originally owned and assigned to General Electric. The patent expired in December 2007, but Princeton has sued large numbers of companies for "past infringement" of this patent. (Under U.S. patent laws, a patent owner can sue for "past infringement" up to six years before the filing of a lawsuit, so Princeton could theoretically have continued suing companies until December 2013.) As of March 2013, Princeton had suits pending in New York and Delaware against more than 55 companies. General Electric's involvement in the suit is unknown, although court records indicate that it assigned the patent to Princeton in 2009 and retains certain rights in the patent.[40]

Typical use

The JPEG compression algorithm operates at its best on photographs and paintings of realistic scenes with smooth variations of tone and color. For web usage, where reducing the amount of data used for an image is important for responsive presentation, JPEG's compression benefits make JPEG popular. JPEG/Exif is also the most common format saved by digital cameras.

However, JPEG is not well suited for line drawings and other textual or iconic graphics, where the sharp contrasts between adjacent pixels can cause noticeable artifacts. Such images are better saved in a lossless graphics format such as TIFF, GIF, PNG, or a raw image format. The JPEG standard includes a lossless coding mode, but that mode is not supported in most products.

As the typical use of JPEG is a lossy compression method, which reduces the image fidelity, it is inappropriate for exact reproduction of imaging data (such as some scientific and medical imaging applications and certain technical image processing work).

JPEG is also not well suited to files that will undergo multiple edits, as some image quality is lost each time the image is recompressed, particularly if the image is cropped or shifted, or if encoding parameters are changed – see digital generation loss for details. To prevent image information loss during sequential and repetitive editing, the first edit can be saved in a lossless format, subsequently edited in that format, then finally published as JPEG for distribution.

JPEG compression

JPEG uses a lossy form of compression based on the discrete cosine transform (DCT). This mathematical operation converts each frame/field of the video source from the spatial (2D) domain into the frequency domain (a.k.a. transform domain). A perceptual model based loosely on the human psychovisual system discards high-frequency information, i.e. sharp transitions in intensity, and color hue. In the transform domain, the process of reducing information is called quantization. In simpler terms, quantization is a method for optimally reducing a large number scale (with different occurrences of each number) into a smaller one, and the transform-domain is a convenient representation of the image because the high-frequency coefficients, which contribute less to the overall picture than other coefficients, are characteristically small-values with high compressibility. The quantized coefficients are then sequenced and losslessly packed into the output bitstream. Nearly all software implementations of JPEG permit user control over the compression ratio (as well as other optional parameters), allowing the user to trade off picture-quality for smaller file size. In embedded applications (such as miniDV, which uses a similar DCT-compression scheme), the parameters are pre-selected and fixed for the application.

The compression method is usually lossy, meaning that some original image information is lost and cannot be restored, possibly affecting image quality. There is an optional lossless mode defined in the JPEG standard. However, this mode is not widely supported in products.

There is also an interlaced progressive JPEG format, in which data is compressed in multiple passes of progressively higher detail. This is ideal for large images that will be displayed while downloading over a slow connection, allowing a reasonable preview after receiving only a portion of the data. However, support for progressive JPEGs is not universal. When progressive JPEGs are received by programs that do not support them (such as versions of Internet Explorer before Windows 7)[41] the software displays the image only after it has been completely downloaded.

There are also many medical imaging, traffic and camera applications that create and process 12-bit JPEG images both grayscale and color. 12-bit JPEG format is included in an Extended part of the JPEG specification. The libjpeg codec supports 12-bit JPEG and there even exists a high-performance version.[42]

Lossless editing

Several alterations to a JPEG image can be performed losslessly (that is, without recompression and the associated quality loss) as long as the image size is a multiple of 1 MCU block (Minimum Coded Unit) (usually 16 pixels in both directions, for 4:2:0 chroma subsampling). Utilities that implement this include:

  • jpegtran and its GUI, Jpegcrop.
  • IrfanView using "JPG Lossless Crop (PlugIn)" and "JPG Lossless Rotation (PlugIn)", which require installing the JPG_TRANSFORM plugin.
  • FastStone Image Viewer using "Lossless Crop to File" and "JPEG Lossless Rotate".
  • XnViewMP using "JPEG lossless transformations".
  • ACDSee supports lossless rotation (but not lossless cropping) with its "Force lossless JPEG operations" option.

Blocks can be rotated in 90-degree increments, flipped in the horizontal, vertical and diagonal axes and moved about in the image. Not all blocks from the original image need to be used in the modified one.

The top and left edge of a JPEG image must lie on an 8 × 8 pixel block boundary, but the bottom and right edge need not do so. This limits the possible lossless crop operations, and also prevents flips and rotations of an image whose bottom or right edge does not lie on a block boundary for all channels (because the edge would end up on top or left, where – as aforementioned – a block boundary is obligatory).

Rotations where the image is not a multiple of 8 or 16, which value depends upon the chroma subsampling, are not lossless. Rotating such an image causes the blocks to be recomputed which results in loss of quality.[43]

When using lossless cropping, if the bottom or right side of the crop region is not on a block boundary, then the rest of the data from the partially used blocks will still be present in the cropped file and can be recovered. It is also possible to transform between baseline and progressive formats without any loss of quality, since the only difference is the order in which the coefficients are placed in the file.

Furthermore, several JPEG images can be losslessly joined, as long as they were saved with the same quality and the edges coincide with block boundaries.

JPEG files

The file format known as "JPEG Interchange Format" (JIF) is specified in Annex B of the standard. However, this "pure" file format is rarely used, primarily because of the difficulty of programming encoders and decoders that fully implement all aspects of the standard and because of certain shortcomings of the standard:

  • Color space definition
  • Component sub-sampling registration
  • Pixel aspect ratio definition.

Several additional standards have evolved to address these issues. The first of these, released in 1992, was the JPEG File Interchange Format (or JFIF), followed in recent years by Exchangeable image file format (Exif) and ICC color profiles. Both of these formats use the actual JIF byte layout, consisting of different markers, but in addition, employ one of the JIF standard's extension points, namely the application markers: JFIF uses APP0, while Exif uses APP1. Within these segments of the file that were left for future use in the JIF standard and are not read by it, these standards add specific metadata.

Thus, in some ways, JFIF is a cut-down version of the JIF standard in that it specifies certain constraints (such as not allowing all the different encoding modes), while in other ways, it is an extension of JIF due to the added metadata. The documentation for the original JFIF standard states:[44]

JPEG File Interchange Format is a minimal file format which enables JPEG bitstreams to be exchanged between a wide variety of platforms and applications. This minimal format does not include any of the advanced features found in the TIFF JPEG specification or any application specific file format. Nor should it, for the only purpose of this simplified format is to allow the exchange of JPEG compressed images.

Image files that employ JPEG compression are commonly called "JPEG files", and are stored in variants of the JIF image format. Most image capture devices (such as digital cameras) that output JPEG are actually creating files in the Exif format, the format that the camera industry has standardized on for metadata interchange. On the other hand, since the Exif standard does not allow color profiles, most image editing software stores JPEG in JFIF format, and also includes the APP1 segment from the Exif file to include the metadata in an almost-compliant way; the JFIF standard is interpreted somewhat flexibly.[45]

Strictly speaking, the JFIF and Exif standards are incompatible, because each specifies that its marker segment (APP0 or APP1, respectively) appear first. In practice, most JPEG files contain a JFIF marker segment that precedes the Exif header. This allows older readers to correctly handle the older format JFIF segment, while newer readers also decode the following Exif segment, being less strict about requiring it to appear first.

JPEG filename extensions

The most common filename extensions for files employing JPEG compression are .jpg and .jpeg, though .jpe, .jfif and .jif are also used.[citation needed] It is also possible for JPEG data to be embedded in other file types – TIFF encoded files often embed a JPEG image as a thumbnail of the main image; and MP3 files can contain a JPEG of cover art in the ID3v2 tag.

Color profile

Many JPEG files embed an ICC color profile (color space). Commonly used color profiles include sRGB and Adobe RGB. Because these color spaces use a non-linear transformation, the dynamic range of an 8-bit JPEG file is about 11 stops; see gamma curve.

If the image doesn't specify color profile information (untagged), the color space is assumed to be sRGB for the purposes of display on webpages.[46][47]

Syntax and structure

A JPEG image consists of a sequence of segments, each beginning with a marker, each of which begins with a 0xFF byte, followed by a byte indicating what kind of marker it is. Some markers consist of just those two bytes; others are followed by two bytes (high then low), indicating the length of marker-specific payload data that follows. (The length includes the two bytes for the length, but not the two bytes for the marker.) Some markers are followed by entropy-coded data; the length of such a marker does not include the entropy-coded data. Note that consecutive 0xFF bytes are used as fill bytes for padding purposes, although this fill byte padding should only ever take place for markers immediately following entropy-coded scan data (see JPEG specification section B.1.1.2 and E.1.2 for details; specifically "In all cases where markers are appended after the compressed data, optional 0xFF fill bytes may precede the marker").

Within the entropy-coded data, after any 0xFF byte, a 0x00 byte is inserted by the encoder before the next byte, so that there does not appear to be a marker where none is intended, preventing framing errors. Decoders must skip this 0x00 byte. This technique, called byte stuffing (see JPEG specification section F.1.2.3), is only applied to the entropy-coded data, not to marker payload data. Note however that entropy-coded data has a few markers of its own; specifically the Reset markers (0xD0 through 0xD7), which are used to isolate independent chunks of entropy-coded data to allow parallel decoding, and encoders are free to insert these Reset markers at regular intervals (although not all encoders do this).

Common JPEG markers[48]
Short name Bytes Payload Name Comments
SOI 0xFF, 0xD8 none Start Of Image
SOF0 0xFF, 0xC0 variable size Start Of Frame (baseline DCT) Indicates that this is a baseline DCT-based JPEG, and specifies the width, height, number of components, and component subsampling (e.g., 4:2:0).
SOF2 0xFF, 0xC2 variable size Start Of Frame (progressive DCT) Indicates that this is a progressive DCT-based JPEG, and specifies the width, height, number of components, and component subsampling (e.g., 4:2:0).
DHT 0xFF, 0xC4 variable size Define Huffman Table(s) Specifies one or more Huffman tables.
DQT 0xFF, 0xDB variable size Define Quantization Table(s) Specifies one or more quantization tables.
DRI 0xFF, 0xDD 4 bytes Define Restart Interval Specifies the interval between RSTn markers, in Minimum Coded Units (MCUs). This marker is followed by two bytes indicating the fixed size so it can be treated like any other variable size segment.
SOS 0xFF, 0xDA variable size Start Of Scan Begins a top-to-bottom scan of the image. In baseline DCT JPEG images, there is generally a single scan. Progressive DCT JPEG images usually contain multiple scans. This marker specifies which slice of data it will contain, and is immediately followed by entropy-coded data.
RSTn 0xFF, 0xDn (n=0..7) none Restart Inserted every r macroblocks, where r is the restart interval set by a DRI marker. Not used if there was no DRI marker. The low three bits of the marker code cycle in value from 0 to 7.
APPn 0xFF, 0xEn variable size Application-specific For example, an Exif JPEG file uses an APP1 marker to store metadata, laid out in a structure based closely on TIFF.
COM 0xFF, 0xFE variable size Comment Contains a text comment.
EOI 0xFF, 0xD9 none End Of Image

There are other Start Of Frame markers that introduce other kinds of JPEG encodings.

Since several vendors might use the same APPn marker type, application-specific markers often begin with a standard or vendor name (e.g., "Exif" or "Adobe") or some other identifying string.

At a restart marker, block-to-block predictor variables are reset, and the bitstream is synchronized to a byte boundary. Restart markers provide means for recovery after bitstream error, such as transmission over an unreliable network or file corruption. Since the runs of macroblocks between restart markers may be independently decoded, these runs may be decoded in parallel.

JPEG codec example

Although a JPEG file can be encoded in various ways, most commonly it is done with JFIF encoding. The encoding process consists of several steps:

  1. The representation of the colors in the image is converted from RGB to Y′CBCR, consisting of one luma component (Y'), representing brightness, and two chroma components, (CB and CR), representing color. This step is sometimes skipped.
  2. The resolution of the chroma data is reduced, usually by a factor of 2 or 3. This reflects the fact that the eye is less sensitive to fine color details than to fine brightness details.
  3. The image is split into blocks of 8×8 pixels, and for each block, each of the Y, CB, and CR data undergoes the discrete cosine transform (DCT). A DCT is similar to a Fourier transform in the sense that it produces a kind of spatial frequency spectrum.
  4. The amplitudes of the frequency components are quantized. Human vision is much more sensitive to small variations in color or brightness over large areas than to the strength of high-frequency brightness variations. Therefore, the magnitudes of the high-frequency components are stored with a lower accuracy than the low-frequency components. The quality setting of the encoder (for example 50 or 95 on a scale of 0–100 in the Independent JPEG Group's library[49]) affects to what extent the resolution of each frequency component is reduced. If an excessively low quality setting is used, the high-frequency components are discarded altogether.
  5. The resulting data for all 8×8 blocks is further compressed with a lossless algorithm, a variant of Huffman encoding.

The decoding process reverses these steps, except the quantization because it is irreversible. In the remainder of this section, the encoding and decoding processes are described in more detail.

Encoding

Many of the options in the JPEG standard are not commonly used, and as mentioned above, most image software uses the simpler JFIF format when creating a JPEG file, which among other things specifies the encoding method. Here is a brief description of one of the more common methods of encoding when applied to an input that has 24 bits per pixel (eight each of red, green, and blue). This particular option is a lossy data compression method.

Color space transformation

First, the image should be converted from RGB (by default sRGB,[46][47] but other color spaces are possible) into a different color space called Y′CBCR (or, informally, YCbCr). It has three components Y', CB and CR: the Y' component represents the brightness of a pixel, and the CB and CR components represent the chrominance (split into blue and red components). This is basically the same color space as used by digital color television as well as digital video including video DVDs. The Y′CBCR color space conversion allows greater compression without a significant effect on perceptual image quality (or greater perceptual image quality for the same compression). The compression is more efficient because the brightness information, which is more important to the eventual perceptual quality of the image, is confined to a single channel. This more closely corresponds to the perception of color in the human visual system. The color transformation also improves compression by statistical decorrelation.

A particular conversion to Y′CBCR is specified in the JFIF standard, and should be performed for the resulting JPEG file to have maximum compatibility. However, some JPEG implementations in "highest quality" mode do not apply this step and instead keep the color information in the RGB color model,[50] where the image is stored in separate channels for red, green and blue brightness components. This results in less efficient compression, and would not likely be used when file size is especially important.

Downsampling

Due to the densities of color- and brightness-sensitive receptors in the human eye, humans can see considerably more fine detail in the brightness of an image (the Y' component) than in the hue and color saturation of an image (the Cb and Cr components). Using this knowledge, encoders can be designed to compress images more efficiently.

The transformation into the Y′CBCR color model enables the next usual step, which is to reduce the spatial resolution of the Cb and Cr components (called "downsampling" or "chroma subsampling"). The ratios at which the downsampling is ordinarily done for JPEG images are 4:4:4 (no downsampling), 4:2:2 (reduction by a factor of 2 in the horizontal direction), or (most commonly) 4:2:0 (reduction by a factor of 2 in both the horizontal and vertical directions). For the rest of the compression process, Y', Cb and Cr are processed separately and in a very similar manner.

Block splitting

After subsampling, each channel must be split into 8×8 blocks. Depending on chroma subsampling, this yields Minimum Coded Unit (MCU) blocks of size 8×8 (4:4:4 – no subsampling), 16×8 (4:2:2), or most commonly 16×16 (4:2:0). In video compression MCUs are called macroblocks.

If the data for a channel does not represent an integer number of blocks then the encoder must fill the remaining area of the incomplete blocks with some form of dummy data. Filling the edges with a fixed color (for example, black) can create ringing artifacts along the visible part of the border; repeating the edge pixels is a common technique that reduces (but does not necessarily eliminate) such artifacts, and more sophisticated border filling techniques can also be applied.

Discrete cosine transform

 
The 8×8 sub-image shown in 8-bit grayscale

Next, each 8×8 block of each component (Y, Cb, Cr) is converted to a frequency-domain representation, using a normalized, two-dimensional type-II discrete cosine transform (DCT), see Citation 1 in discrete cosine transform. The DCT is sometimes referred to as "type-II DCT" in the context of a family of transforms as in discrete cosine transform, and the corresponding inverse (IDCT) is denoted as "type-III DCT".

As an example, one such 8×8 8-bit subimage might be:

 

Before computing the DCT of the 8×8 block, its values are shifted from a positive range to one centered on zero. For an 8-bit image, each entry in the original block falls in the range  . The midpoint of the range (in this case, the value 128) is subtracted from each entry to produce a data range that is centered on zero, so that the modified range is  . This step reduces the dynamic range requirements in the DCT processing stage that follows.

This step results in the following values:

 
 
The DCT transforms an 8×8 block of input values to a linear combination of these 64 patterns. The patterns are referred to as the two-dimensional DCT basis functions, and the output values are referred to as transform coefficients. The horizontal index is   and the vertical index is  .

The next step is to take the two-dimensional DCT, which is given by:

 

where

  •   is the horizontal spatial frequency, for the integers  .
  •   is the vertical spatial frequency, for the integers  .
  •   is a normalizing scale factor to make the transformation orthonormal
  •   is the pixel value at coordinates  
  •   is the DCT coefficient at coordinates  

If we perform this transformation on our matrix above, we get the following (rounded to the nearest two digits beyond the decimal point):

 

Note the top-left corner entry with the rather large magnitude. This is the DC coefficient (also called the constant component), which defines the basic hue for the entire block. The remaining 63 coefficients are the AC coefficients (also called the alternating components).[51] The advantage of the DCT is its tendency to aggregate most of the signal in one corner of the result, as may be seen above. The quantization step to follow accentuates this effect while simultaneously reducing the overall size of the DCT coefficients, resulting in a signal that is easy to compress efficiently in the entropy stage.

The DCT temporarily increases the bit-depth of the data, since the DCT coefficients of an 8-bit/component image take up to 11 or more bits (depending on fidelity of the DCT calculation) to store. This may force the codec to temporarily use 16-bit numbers to hold these coefficients, doubling the size of the image representation at this point; these values are typically reduced back to 8-bit values by the quantization step. The temporary increase in size at this stage is not a performance concern for most JPEG implementations, since typically only a very small part of the image is stored in full DCT form at any given time during the image encoding or decoding process.

Quantization

The human eye is good at seeing small differences in brightness over a relatively large area, but not so good at distinguishing the exact strength of a high frequency brightness variation. This allows one to greatly reduce the amount of information in the high frequency components. This is done by simply dividing each component in the frequency domain by a constant for that component, and then rounding to the nearest integer. This rounding operation is the only lossy operation in the whole process (other than chroma subsampling) if the DCT computation is performed with sufficiently high precision. As a result of this, it is typically the case that many of the higher frequency components are rounded to zero, and many of the rest become small positive or negative numbers, which take many fewer bits to represent.

The elements in the quantization matrix control the compression ratio, with larger values producing greater compression. A typical quantization matrix (for a quality of 50% as specified in the original JPEG Standard), is as follows:

 

The quantized DCT coefficients are computed with

 

where   is the unquantized DCT coefficients;   is the quantization matrix above; and   is the quantized DCT coefficients.

Using this quantization matrix with the DCT coefficient matrix from above results in:

 
Left: a final image is built up from a series of basis functions. Right: each of the DCT basis functions that comprise the image, and the corresponding weighting coefficient. Middle: the basis function, after multiplication by the coefficient: this component is added to the final image. For clarity, the 8×8 macroblock in this example is magnified by 10x using bilinear interpolation.
 

For example, using −415 (the DC coefficient) and rounding to the nearest integer

 

Notice that most of the higher-frequency elements of the sub-block (i.e., those with an x or y spatial frequency greater than 4) are quantized into zero values.

Entropy coding

 
Zigzag ordering of JPEG image components

Entropy coding is a special form of lossless data compression. It involves arranging the image components in a "zigzag" order employing run-length encoding (RLE) algorithm that groups similar frequencies together, inserting length coding zeros, and then using Huffman coding on what is left.

The JPEG standard also allows, but does not require, decoders to support the use of arithmetic coding, which is mathematically superior to Huffman coding. However, this feature has rarely been used, as it was historically covered by patents requiring royalty-bearing licenses, and because it is slower to encode and decode compared to Huffman coding. Arithmetic coding typically makes files about 5–7% smaller.

The previous quantized DC coefficient is used to predict the current quantized DC coefficient. The difference between the two is encoded rather than the actual value. The encoding of the 63 quantized AC coefficients does not use such prediction differencing.

The zigzag sequence for the above quantized coefficients are shown below. (The format shown is just for ease of understanding/viewing.)

−26
−3 0
−3 −2 −6
2 −4 1 −3
1 1 5 1 2
−1 1 −1 2 0 0
0 0 0 −1 −1 0 0
0 0 0 0 0 0 0 0
0 0 0 0 0 0 0
0 0 0 0 0 0
0 0 0 0 0
0 0 0 0
0 0 0
0 0
0

If the i-th block is represented by   and positions within each block are represented by   where   and  , then any coefficient in the DCT image can be represented as  . Thus, in the above scheme, the order of encoding pixels (for the i-th block) is  ,  ,  ,  ,  ,  ,  ,   and so on.

 
Baseline sequential JPEG encoding and decoding processes

This encoding mode is called baseline sequential encoding. Baseline JPEG also supports progressive encoding. While sequential encoding encodes coefficients of a single block at a time (in a zigzag manner), progressive encoding encodes similar-positioned batch of coefficients of all blocks in one go (called a scan), followed by the next batch of coefficients of all blocks, and so on. For example, if the image is divided into N 8×8 blocks  , then a 3-scan progressive encoding encodes DC component,   for all blocks, i.e., for all  , in first scan. This is followed by the second scan which encoding a few more components (assuming four more components, they are   to  , still in a zigzag manner) coefficients of all blocks (so the sequence is:  ), followed by all the remained coefficients of all blocks in the last scan.

Once all similar-positioned coefficients have been encoded, the next position to be encoded is the one occurring next in the zigzag traversal as indicated in the figure above. It has been found that baseline progressive JPEG encoding usually gives better compression as compared to baseline sequential JPEG due to the ability to use different Huffman tables (see below) tailored for different frequencies on each "scan" or "pass" (which includes similar-positioned coefficients), though the difference is not too large.

In the rest of the article, it is assumed that the coefficient pattern generated is due to sequential mode.

In order to encode the above generated coefficient pattern, JPEG uses Huffman encoding. The JPEG standard provides general-purpose Huffman tables; encoders may also choose to generate Huffman tables optimized for the actual frequency distributions in images being encoded.

The process of encoding the zig-zag quantized data begins with a run-length encoding explained below, where:

  • x is the non-zero, quantized AC coefficient.
  • RUNLENGTH is the number of zeroes that came before this non-zero AC coefficient.
  • SIZE is the number of bits required to represent x.
  • AMPLITUDE is the bit-representation of x.

The run-length encoding works by examining each non-zero AC coefficient x and determining how many zeroes came before the previous AC coefficient. With this information, two symbols are created:

Symbol 1 Symbol 2
(RUNLENGTH, SIZE) (AMPLITUDE)

Both RUNLENGTH and SIZE rest on the same byte, meaning that each only contains four bits of information. The higher bits deal with the number of zeroes, while the lower bits denote the number of bits necessary to encode the value of x.

This has the immediate implication of Symbol 1 being only able store information regarding the first 15 zeroes preceding the non-zero AC coefficient. However, JPEG defines two special Huffman code words. One is for ending the sequence prematurely when the remaining coefficients are zero (called "End-of-Block" or "EOB"), and another when the run of zeroes goes beyond 15 before reaching a non-zero AC coefficient. In such a case where 16 zeroes are encountered before a given non-zero AC coefficient, Symbol 1 is encoded "specially" as: (15, 0)(0).

The overall process continues until "EOB" – denoted by (0, 0) – is reached.

With this in mind, the sequence from earlier becomes:

(0, 2)(-3);(1, 2)(-3);(0, 1)(-2);(0, 2)(-6);(0, 1)(2);(0, 1)(-4);(0, 1)(1);(0, 2)(-3);(0, 1)(1);(0, 1)(1);
(0, 2)(5);(0, 1)(1);(0, 1)(2);(0, 1)(-1);(0, 1)(1);(0, 1)(-1);(0, 1)(2);(5, 1)(-1);(0, 1)(-1);(0, 0);

(The first value in the matrix, −26, is the DC coefficient; it is not encoded the same way. See above.)

From here, frequency calculations are made based on occurrences of the coefficients. In our example block, most of the quantized coefficients are small numbers that are not preceded immediately by a zero coefficient. These more-frequent cases will be represented by shorter code words.

Compression ratio and artifacts

 
This image shows the pixels that are different between a non-compressed image and the same image JPEG compressed with a quality setting of 50. Darker means a larger difference. Note especially the changes occurring near sharp edges and having a block-like shape.
 
The original image
 
The compressed 8×8 squares are visible in the scaled-up picture, together with other visual artifacts of the lossy compression.

The resulting compression ratio can be varied according to need by being more or less aggressive in the divisors used in the quantization phase. Ten to one compression usually results in an image that cannot be distinguished by eye from the original. A compression ratio of 100:1 is usually possible, but will look distinctly artifacted compared to the original. The appropriate level of compression depends on the use to which the image will be put.

External image
  Illustration of edge busyness[52]

Those who use the World Wide Web may be familiar with the irregularities known as compression artifacts that appear in JPEG images, which may take the form of noise around contrasting edges (especially curves and corners), or "blocky" images. These are due to the quantization step of the JPEG algorithm. They are especially noticeable around sharp corners between contrasting colors (text is a good example, as it contains many such corners). The analogous artifacts in MPEG video are referred to as mosquito noise, as the resulting "edge busyness" and spurious dots, which change over time, resemble mosquitoes swarming around the object.[52][53]

These artifacts can be reduced by choosing a lower level of compression; they may be completely avoided by saving an image using a lossless file format, though this will result in a larger file size. The images created with ray-tracing programs have noticeable blocky shapes on the terrain. Certain low-intensity compression artifacts might be acceptable when simply viewing the images, but can be emphasized if the image is subsequently processed, usually resulting in unacceptable quality. Consider the example below, demonstrating the effect of lossy compression on an edge detection processing step.

Image Lossless compression Lossy compression
Original    
Processed by
Canny edge detector
   

Some programs allow the user to vary the amount by which individual blocks are compressed. Stronger compression is applied to areas of the image that show fewer artifacts. This way it is possible to manually reduce JPEG file size with less loss of quality.

Since the quantization stage always results in a loss of information, JPEG standard is always a lossy compression codec. (Information is lost both in quantizing and rounding of the floating-point numbers.) Even if the quantization matrix is a matrix of ones, information will still be lost in the rounding step.

Decoding

Decoding to display the image consists of doing all the above in reverse.

Taking the DCT coefficient matrix (after adding the difference of the DC coefficient back in)

 

and taking the entry-for-entry product with the quantization matrix from above results in

 

which closely resembles the original DCT coefficient matrix for the top-left portion.

The next step is to take the two-dimensional inverse DCT (a 2D type-III DCT), which is given by:

 

where

  •   is the pixel row, for the integers  .
  •   is the pixel column, for the integers  .
  •   is the normalizing scale factor defined earlier, for the integers  .
  •   is the approximated DCT coefficient at coordinates  
  •   is the reconstructed pixel value at coordinates  

Rounding the output to integer values (since the original had integer values) results in an image with values (still shifted down by 128)

 
 
Slight differences are noticeable between the original (top) and decompressed image (bottom), which is most readily seen in the bottom-left corner.
 

and adding 128 to each entry

 

This is the decompressed subimage. In general, the decompression process may produce values outside the original input range of  . If this occurs, the decoder needs to clip the output values so as to keep them within that range to prevent overflow when storing the decompressed image with the original bit depth.

The decompressed subimage can be compared to the original subimage (also see images to the right) by taking the difference (original − uncompressed) results in the following error values:

 

with an average absolute error of about 5 values per pixels (i.e.,  ).

The error is most noticeable in the bottom-left corner where the bottom-left pixel becomes darker than the pixel to its immediate right.

Required precision

The required implementation precision of a JPEG codec is implicitly defined through the requirements formulated for compliance to the JPEG standard. These requirements are specified in ITU.T Recommendation T.83 | ISO/IEC 10918-2. Unlike MPEG standards and many later JPEG standards, the above document defines both required implementation precisions for the encoding and the decoding process of a JPEG codec by means of a maximal tolerable error of the forwards and inverse DCT in the DCT domain as determined by reference test streams. For example, the output of a decoder implementation must not exceed an error of one quantization unit in the DCT domain when applied to the reference testing codestreams provided as part of the above standard. While unusual, and unlike many other and more modern standards, ITU.T T.83 | ISO/IEC 10918-2 does not formulate error bounds in the image domain.

Effects of JPEG compression

JPEG compression artifacts blend well into photographs with detailed non-uniform textures, allowing higher compression ratios. Notice how a higher compression ratio first affects the high-frequency textures in the upper-left corner of the image, and how the contrasting lines become more fuzzy. The very high compression ratio severely affects the quality of the image, although the overall colors and image form are still recognizable. However, the precision of colors suffer less (for a human eye) than the precision of contours (based on luminance). This justifies the fact that images should be first transformed in a color model separating the luminance from the chromatic information, before subsampling the chromatic planes (which may also use lower quality quantization) in order to preserve the precision of the luminance plane with more information bits.

Sample photographs

 
Visual impact of a jpeg compression on Photoshop on a picture of 4480x4480 pixels

For information, the uncompressed 24-bit RGB bitmap image below (73,242 pixels) would require 219,726 bytes (excluding all other information headers). The filesizes indicated below include the internal JPEG information headers and some metadata. For highest quality images (Q=100), about 8.25 bits per color pixel is required. On grayscale images, a minimum of 6.5 bits per pixel is enough (a comparable Q=100 quality color information requires about 25% more encoded bits). The highest quality image below (Q=100) is encoded at nine bits per color pixel, the medium quality image (Q=25) uses one bit per color pixel. For most applications, the quality factor should not go below 0.75 bit per pixel (Q=12.5), as demonstrated by the low quality image. The image at lowest quality uses only 0.13 bit per pixel, and displays very poor color. This is useful when the image will be displayed in a significantly scaled-down size. A method for creating better quantization matrices for a given image quality using PSNR instead of the Q factor is described in Minguillón & Pujol (2001).[54]

Note: The above images are not IEEE / CCIR / EBU test images, and the encoder settings are not specified or available.
Image Quality Size (bytes) Compression ratio Comment
  Highest quality (Q = 100) 81,447 2.7:1 Extremely minor artifacts
  High quality (Q = 50) 14,679 15:1 Initial signs of subimage artifacts
  Medium quality (Q = 25) 9,407 23:1 Stronger artifacts; loss of high frequency information
  Low quality (Q = 10) 4,787 46:1 Severe high frequency loss leads to obvious artifacts on subimage boundaries ("macroblocking")
  Lowest quality (Q = 1) 1,523 144:1 Extreme loss of color and detail; the leaves are nearly unrecognizable.

The medium quality photo uses only 4.3% of the storage space required for the uncompressed image, but has little noticeable loss of detail or visible artifacts. However, once a certain threshold of compression is passed, compressed images show increasingly visible defects. See the article on rate–distortion theory for a mathematical explanation of this threshold effect. A particular limitation of JPEG in this regard is its non-overlapped 8×8 block transform structure. More modern designs such as JPEG 2000 and JPEG XR exhibit a more graceful degradation of quality as the bit usage decreases – by using transforms with a larger spatial extent for the lower frequency coefficients and by using overlapping transform basis functions.

Lossless further compression

From 2004 to 2008, new research emerged on ways to further compress the data contained in JPEG images without modifying the represented image.[55][56][57][58] This has applications in scenarios where the original image is only available in JPEG format, and its size needs to be reduced for archiving or transmission. Standard general-purpose compression tools cannot significantly compress JPEG files.

Typically, such schemes take advantage of improvements to the naive scheme for coding DCT coefficients, which fails to take into account:

  • Correlations between magnitudes of adjacent coefficients in the same block;
  • Correlations between magnitudes of the same coefficient in adjacent blocks;
  • Correlations between magnitudes of the same coefficient/block in different channels;
  • The DC coefficients when taken together resemble a downscale version of the original image multiplied by a scaling factor. Well-known schemes for lossless coding of continuous-tone images can be applied, achieving somewhat better compression than the Huffman coded DPCM used in JPEG.

Some standard but rarely used options already exist in JPEG to improve the efficiency of coding DCT coefficients: the arithmetic coding option, and the progressive coding option (which produces lower bitrates because values for each coefficient are coded independently, and each coefficient has a significantly different distribution). Modern methods have improved on these techniques by reordering coefficients to group coefficients of larger magnitude together;[55] using adjacent coefficients and blocks to predict new coefficient values;[57] dividing blocks or coefficients up among a small number of independently coded models based on their statistics and adjacent values;[56][57] and most recently, by decoding blocks, predicting subsequent blocks in the spatial domain, and then encoding these to generate predictions for DCT coefficients.[58]

Typically, such methods can compress existing JPEG files between 15 and 25 percent, and for JPEGs compressed at low-quality settings, can produce improvements of up to 65%.[57][58]

A freely available tool called packJPG is based on the 2007 paper "Improved Redundancy Reduction for JPEG Files." As of version 2.5k of 2016, it reports a typical 20% reduction by transcoding.[59] JPEG XL (ISO/IEC 18181) of 2018 reports a similar reduction in its transcoding.

Derived formats for stereoscopic 3D

JPEG Stereoscopic

 
An example of a stereoscopic .JPS file

JPS is a stereoscopic JPEG image used for creating 3D effects from 2D images. It contains two static images, one for the left eye and one for the right eye; encoded as two side-by-side images in a single JPG file. JPEG Stereoscopic (JPS, extension .jps) is a JPEG-based format for stereoscopic images.[60][61] It has a range of configurations stored in the JPEG APP3 marker field, but usually contains one image of double width, representing two images of identical size in cross-eyed (i.e. left frame on the right half of the image and vice versa) side-by-side arrangement. This file format can be viewed as a JPEG without any special software, or can be processed for rendering in other modes.

JPEG Multi-Picture Format

JPEG Multi-Picture Format (MPO, extension .mpo) is a JPEG-based format for storing multiple images in a single file. It contains two or more JPEG files concatenated together.[62][63] It also defines a JPEG APP2 marker segment for image description. Various devices use it to store 3D images, such as Fujifilm FinePix Real 3D W1, HTC Evo 3D, JVC GY-HMZ1U AVCHD/MVC extension camcorder, Nintendo 3DS, Panasonic Lumix DMC-TZ20, DMC-TZ30, DMC-TZ60, DMC-TS4 (FT4), and Sony DSC-HX7V. Other devices use it to store "preview images" that can be displayed on a TV.

In the last few years, due to the growing use of stereoscopic images, much effort has been spent by the scientific community to develop algorithms for stereoscopic image compression.[64][65]

Implementations

A very important implementation of a JPEG codec is the free programming library libjpeg of the Independent JPEG Group. It was first published in 1991 and was key for the success of the standard. This library was used in countless applications. [66] The development went quiet in 1998; when libjpeg resurfaced with the 2009 version 7, it broke ABI compatibility with previous versions. Version 8 of 2010 introduced non-standard extensions, a decision criticized by the original IJG leader Tom Lane.[67]

libjpeg-turbo, forked from the 1998 libjpeg 6b, improves on libjpeg with SIMD optimizations. Originally seen as a maintained fork of libjpeg, it has become more popular after the incompatible changes of 2009.[68][69] In 2019, it became the ITU|ISO/IEC reference implementation as ISO/IEC 10918-7 and ITU-T T.873.[70]

ISO/IEC Joint Photography Experts Group maintains the other reference software implementation under the JPEG XT heading. It can encode both base JPEG (ISO/IEC 10918-1 and 18477–1) and JPEG XT extensions (ISO/IEC 18477 Parts 2 and 6–9), as well as JPEG-LS (ISO/IEC 14495).[71]

There is persistent interest in encoding JPEG in unconventional ways that maximize image quality for a given file size. In 2014, Mozilla created mozjpeg from libjpeg-turbo, a slower but higher-quality encoder intended for web images.[72] In 2016, "JPEG on steroids" was introduced as an option for the ISO JPEG XT reference implementation.[73] In March 2017, Google released the open source project Guetzli, which trades off a much longer encoding time for smaller file size (similar to what Zopfli does for PNG and other lossless data formats).[74]

JPEG XT

JPEG XT (ISO/IEC 18477) was published in June 2015; it extends base JPEG format with support for higher integer bit depths (up to 16 bit), high dynamic range imaging and floating-point coding, lossless coding, and alpha channel coding. Extensions are backward compatible with the base JPEG/JFIF file format and 8-bit lossy compressed image. JPEG XT uses an extensible file format based on JFIF. Extension layers are used to modify the JPEG 8-bit base layer and restore the high-resolution image. Existing software is forward compatible and can read the JPEG XT binary stream, though it would only decode the base 8-bit layer.[75]

JPEG XL

JPEG XL (ISO/IEC 18181) was published in 2021–2022. It replaces the JPEG format with a new DCT-based royalty-free format and allows efficient transcoding as a storage option for traditional JPEG images.[76] The new format is designed to exceed the still image compression performance shown by HEVC HM, Daala and WebP. It supports billion-by-billion pixel images, up to 32-bit-per-component high dynamic range with the appropriate transfer functions (PQ and HLG), patch encoding of synthetic images such as bitmap fonts and gradients, animated images, alpha channel coding, and a choice of RGB/YCbCr/ICtCp color encoding.[77][78][79][80]

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  77. ^ Rhatushnyak, Alexander; Wassenberg, Jan; Sneyers, Jon; Alakuijala, Jyrki; Vandevenne, Lode; Versari, Luca; Obryk, Robert; Szabadka, Zoltan; Kliuchnikov, Evgenii; Comsa, Iulia-Maria; Potempa, Krzysztof; Bruse, Martin; Firsching, Moritz; Khasanova, Renata; Ruud van Asseldonk; Boukortt, Sami; Gomez, Sebastian; Fischbacher, Thomas (2019). "Committee Draft of JPEG XL Image Coding System". arXiv:1908.03565 [eess.IV].
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  80. ^ ISO/IEC 18181-2:2021 Information technology — JPEG XL image coding system — Part 2: File format.

External links

  • Official website  
  • JPEG Standard (JPEG ISO/IEC 10918-1 ITU-T Recommendation T.81) at W3.org
  • JFIF File Format at W3.org
  • Example images over the full range of quantization levels from 1 to 100 at visengi.com
  • JPEG decoder open source code, copyright (C) 1995–1997, Thomas G. Lane

jpeg, other, uses, disambiguation, redirects, here, other, uses, disambiguation, commonly, used, method, lossy, compression, digital, images, particularly, those, images, produced, digital, photography, degree, compression, adjusted, allowing, selectable, trad. For other uses see JPEG disambiguation JPG redirects here For other uses see JPG disambiguation JPEG ˈ dʒ eɪ p ɛ ɡ JAY peg 2 is a commonly used method of lossy compression for digital images particularly for those images produced by digital photography The degree of compression can be adjusted allowing a selectable tradeoff between storage size and image quality JPEG typically achieves 10 1 compression with little perceptible loss in image quality 3 Since its introduction in 1992 JPEG has been the most widely used image compression standard in the world 4 5 and the most widely used digital image format with several billion JPEG images produced every day as of 2015 6 JPEGA photo of a European wildcat with the compression rate decreasing and hence quality increasing from left to rightFilename extension jpg jpeg jpe jif jfif jfiInternet media typeimage jpegType codeJPEGUniform Type Identifier UTI public jpegMagic numberff d8 ffDeveloped byJoint Photographic Experts Group IBM Mitsubishi Electric AT amp T Canon Inc 1 Initial releaseSeptember 18 1992 30 years ago 1992 09 18 Type of formatLossy image compression formatExtended toJPEG 2000StandardISO IEC 10918 ITU T T 81 ITU T T 83 ITU T T 84 ITU T T 86Websitejpeg wbr org wbr jpeg wbr source source source source source source source source source source source source track Continuously varied JPEG compression between Q 100 and Q 1 for an abdominal CT scan The term JPEG is an acronym for the Joint Photographic Experts Group which created the standard in 1992 7 JPEG was largely responsible for the proliferation of digital images and digital photos across the Internet and later social media 8 JPEG compression is used in a number of image file formats JPEG Exif is the most common image format used by digital cameras and other photographic image capture devices along with JPEG JFIF it is the most common format for storing and transmitting photographic images on the World Wide Web 9 These format variations are often not distinguished and are simply called JPEG The MIME media type for JPEG is image jpeg except in older Internet Explorer versions which provide a MIME type of image pjpeg when uploading JPEG images 10 JPEG files usually have a filename extension of jpg or jpeg JPEG JFIF supports a maximum image size of 65 535 65 535 pixels 11 hence up to 4 gigapixels for an aspect ratio of 1 1 In 2000 the JPEG group introduced a format intended to be a successor JPEG 2000 but it was unable to replace the original JPEG as the dominant image standard 12 Contents 1 History 1 1 Background 1 2 JPEG standard 1 3 Patent controversy 2 Typical use 3 JPEG compression 3 1 Lossless editing 4 JPEG files 4 1 JPEG filename extensions 4 2 Color profile 5 Syntax and structure 6 JPEG codec example 6 1 Encoding 6 1 1 Color space transformation 6 1 2 Downsampling 6 1 3 Block splitting 6 1 4 Discrete cosine transform 6 1 5 Quantization 6 1 6 Entropy coding 6 2 Compression ratio and artifacts 6 3 Decoding 6 4 Required precision 7 Effects of JPEG compression 7 1 Sample photographs 8 Lossless further compression 9 Derived formats for stereoscopic 3D 9 1 JPEG Stereoscopic 9 2 JPEG Multi Picture Format 10 Implementations 11 JPEG XT 12 JPEG XL 13 See also 14 References 15 External linksHistory EditBackground Edit The original JPEG specification published in 1992 implements processes from various earlier research papers and patents cited by the CCITT now ITU T and Joint Photographic Experts Group 1 The JPEG specification cites patents from several companies The following patents provided the basis for its arithmetic coding algorithm 1 IBM U S Patent 4 652 856 February 4 1986 Kottappuram M A Mohiuddin and Jorma J Rissanen Multiplication free multi alphabet arithmetic code U S Patent 4 905 297 February 27 1990 G Langdon J L Mitchell W B Pennebaker and Jorma J Rissanen Arithmetic coding encoder and decoder system U S Patent 4 935 882 June 19 1990 W B Pennebaker and J L Mitchell Probability adaptation for arithmetic coders Mitsubishi Electric JP H02202267 1021672 January 21 1989 Toshihiro Kimura Shigenori Kino Fumitaka Ono Masayuki Yoshida Coding system JP H03247123 2 46275 February 26 1990 Fumitaka Ono Tomohiro Kimura Masayuki Yoshida and Shigenori Kino Coding apparatus and coding methodThe JPEG specification also cites three other patents from IBM Other companies cited as patent holders include AT amp T two patents and Canon Inc 1 Absent from the list is U S Patent 4 698 672 filed by Compression Labs Wen Hsiung Chen and Daniel J Klenke in October 1986 The patent describes a DCT based image compression algorithm and would later be a cause of controversy in 2002 see Patent controversy below 13 However the JPEG specification did cite two earlier research papers by Wen Hsiung Chen published in 1977 and 1984 1 JPEG standard Edit JPEG stands for Joint Photographic Experts Group the name of the committee that created the JPEG standard and also other still picture coding standards The Joint stood for ISO TC97 WG8 and CCITT SGVIII Founded in 1986 the group developed the JPEG standard during the late 1980s The group published the JPEG standard in 1992 4 In 1987 ISO TC 97 became ISO IEC JTC 1 and in 1992 CCITT became ITU T Currently on the JTC1 side JPEG is one of two sub groups of ISO IEC Joint Technical Committee 1 Subcommittee 29 Working Group 1 ISO IEC JTC 1 SC 29 WG 1 titled as Coding of still pictures 14 15 16 On the ITU T side ITU T SG16 is the respective body The original JPEG Group was organized in 1986 17 issuing the first JPEG standard in 1992 which was approved in September 1992 as ITU T Recommendation T 81 18 and in 1994 as ISO IEC 10918 1 The JPEG standard specifies the codec which defines how an image is compressed into a stream of bytes and decompressed back into an image but not the file format used to contain that stream 19 The Exif and JFIF standards define the commonly used file formats for interchange of JPEG compressed images JPEG standards are formally named as Information technology Digital compression and coding of continuous tone still images ISO IEC 10918 consists of the following parts Digital compression and coding of continuous tone still images Parts 15 17 20 Part ISO IEC standard ITU T Rec First public release date Latest amendment Title DescriptionPart 1 ISO IEC 10918 1 1994 T 81 09 92 Sep 18 1992 Requirements and guidelinesPart 2 ISO IEC 10918 2 1995 T 83 11 94 Nov 11 1994 Compliance testing Rules and checks for software conformance to Part 1 Part 3 ISO IEC 10918 3 1997 T 84 07 96 Jul 3 1996 Apr 1 1999 Extensions Set of extensions to improve the Part 1 including the Still Picture Interchange File Format SPIFF 21 Part 4 ISO IEC 10918 4 1999 T 86 06 98 Jun 18 1998 Jun 29 2012 Registration of JPEG profiles SPIFF profiles SPIFF tags SPIFF colour spaces APPn markers SPIFF compression types and Registration Authorities REGAUT methods for registering some of the parameters used to extend JPEGPart 5 ISO IEC 10918 5 2013 T 871 05 11 May 14 2011 JPEG File Interchange Format JFIF A popular format which has been the de facto file format for images encoded by the JPEG standard In 2009 the JPEG Committee formally established an Ad Hoc Group to standardize JFIF as JPEG Part 5 22 Part 6 ISO IEC 10918 6 2013 T 872 06 12 Jun 2012 Application to printing systems Specifies a subset of features and application tools for the interchange of images encoded according to the ISO IEC 10918 1 for printing Part 7 ISO IEC 10918 7 2021 T 873 06 21 May 2019 June 2021 Reference Software Provides reference implementations of the JPEG core coding systemEcma International TR 98 specifies the JPEG File Interchange Format JFIF the first edition was published in June 2009 23 Patent controversy Edit In 2002 Forgent Networks asserted that it owned and would enforce patent rights on the JPEG technology arising from a patent that had been filed on October 27 1986 and granted on October 6 1987 U S Patent 4 698 672 by Compression Labs Wen Hsiung Chen and Daniel J Klenke 13 24 While Forgent did not own Compression Labs at the time Chen later sold Compression Labs to Forgent before Chen went on to work for Cisco This led to Forgent acquiring ownership over the patent 13 Forgent s 2002 announcement created a furor reminiscent of Unisys attempts to assert its rights over the GIF image compression standard The JPEG committee investigated the patent claims in 2002 and were of the opinion that they were invalidated by prior art 25 a view shared by various experts 13 26 Between 2002 and 2004 Forgent was able to obtain about US 105 million by licensing their patent to some 30 companies In April 2004 Forgent sued 31 other companies to enforce further license payments In July of the same year a consortium of 21 large computer companies filed a countersuit with the goal of invalidating the patent In addition Microsoft launched a separate lawsuit against Forgent in April 2005 27 In February 2006 the United States Patent and Trademark Office agreed to re examine Forgent s JPEG patent at the request of the Public Patent Foundation 28 On May 26 2006 the USPTO found the patent invalid based on prior art The USPTO also found that Forgent knew about the prior art yet it intentionally avoided telling the Patent Office This makes any appeal to reinstate the patent highly unlikely to succeed 29 Forgent also possesses a similar patent granted by the European Patent Office in 1994 though it is unclear how enforceable it is 30 As of October 27 2006 the U S patent s 20 year term appears to have expired and in November 2006 Forgent agreed to abandon enforcement of patent claims against use of the JPEG standard 31 The JPEG committee has as one of its explicit goals that their standards in particular their baseline methods be implementable without payment of license fees and they have secured appropriate license rights for their JPEG 2000 standard from over 20 large organizations Beginning in August 2007 another company Global Patent Holdings LLC claimed that its patent U S Patent 5 253 341 issued in 1993 is infringed by the downloading of JPEG images on either a website or through e mail If not invalidated this patent could apply to any website that displays JPEG images The patent was under reexamination by the U S Patent and Trademark Office from 2000 to 2007 in July 2007 the Patent Office revoked all of the original claims of the patent but found that an additional claim proposed by Global Patent Holdings claim 17 was valid 32 Global Patent Holdings then filed a number of lawsuits based on claim 17 of its patent In its first two lawsuits following the reexamination both filed in Chicago Illinois Global Patent Holdings sued the Green Bay Packers CDW Motorola Apple Orbitz Officemax Caterpillar Kraft and Peapod as defendants A third lawsuit was filed on December 5 2007 in South Florida against ADT Security Services AutoNation Florida Crystals Corp HearUSA MovieTickets com Ocwen Financial Corp and Tire Kingdom and a fourth lawsuit on January 8 2008 in South Florida against the Boca Raton Resort amp Club A fifth lawsuit was filed against Global Patent Holdings in Nevada That lawsuit was filed by Zappos com Inc which was allegedly threatened by Global Patent Holdings and sought a judicial declaration that the 341 patent is invalid and not infringed Global Patent Holdings had also used the 341 patent to sue or threaten outspoken critics of broad software patents including Gregory Aharonian 33 and the anonymous operator of a website blog known as the Patent Troll Tracker 34 On December 21 2007 patent lawyer Vernon Francissen of Chicago asked the U S Patent and Trademark Office to reexamine the sole remaining claim of the 341 patent on the basis of new prior art 35 On March 5 2008 the U S Patent and Trademark Office agreed to reexamine the 341 patent finding that the new prior art raised substantial new questions regarding the patent s validity 36 In light of the reexamination the accused infringers in four of the five pending lawsuits have filed motions to suspend stay their cases until completion of the U S Patent and Trademark Office s review of the 341 patent On April 23 2008 a judge presiding over the two lawsuits in Chicago Illinois granted the motions in those cases 37 On July 22 2008 the Patent Office issued the first Office Action of the second reexamination finding the claim invalid based on nineteen separate grounds 38 On Nov 24 2009 a Reexamination Certificate was issued cancelling all claims Beginning in 2011 and continuing as of early 2013 an entity known as Princeton Digital Image Corporation 39 based in Eastern Texas began suing large numbers of companies for alleged infringement of U S Patent 4 813 056 Princeton claims that the JPEG image compression standard infringes the 056 patent and has sued large numbers of websites retailers camera and device manufacturers and resellers The patent was originally owned and assigned to General Electric The patent expired in December 2007 but Princeton has sued large numbers of companies for past infringement of this patent Under U S patent laws a patent owner can sue for past infringement up to six years before the filing of a lawsuit so Princeton could theoretically have continued suing companies until December 2013 As of March 2013 Princeton had suits pending in New York and Delaware against more than 55 companies General Electric s involvement in the suit is unknown although court records indicate that it assigned the patent to Princeton in 2009 and retains certain rights in the patent 40 Typical use EditThe JPEG compression algorithm operates at its best on photographs and paintings of realistic scenes with smooth variations of tone and color For web usage where reducing the amount of data used for an image is important for responsive presentation JPEG s compression benefits make JPEG popular JPEG Exif is also the most common format saved by digital cameras However JPEG is not well suited for line drawings and other textual or iconic graphics where the sharp contrasts between adjacent pixels can cause noticeable artifacts Such images are better saved in a lossless graphics format such as TIFF GIF PNG or a raw image format The JPEG standard includes a lossless coding mode but that mode is not supported in most products As the typical use of JPEG is a lossy compression method which reduces the image fidelity it is inappropriate for exact reproduction of imaging data such as some scientific and medical imaging applications and certain technical image processing work JPEG is also not well suited to files that will undergo multiple edits as some image quality is lost each time the image is recompressed particularly if the image is cropped or shifted or if encoding parameters are changed see digital generation loss for details To prevent image information loss during sequential and repetitive editing the first edit can be saved in a lossless format subsequently edited in that format then finally published as JPEG for distribution JPEG compression EditJPEG uses a lossy form of compression based on the discrete cosine transform DCT This mathematical operation converts each frame field of the video source from the spatial 2D domain into the frequency domain a k a transform domain A perceptual model based loosely on the human psychovisual system discards high frequency information i e sharp transitions in intensity and color hue In the transform domain the process of reducing information is called quantization In simpler terms quantization is a method for optimally reducing a large number scale with different occurrences of each number into a smaller one and the transform domain is a convenient representation of the image because the high frequency coefficients which contribute less to the overall picture than other coefficients are characteristically small values with high compressibility The quantized coefficients are then sequenced and losslessly packed into the output bitstream Nearly all software implementations of JPEG permit user control over the compression ratio as well as other optional parameters allowing the user to trade off picture quality for smaller file size In embedded applications such as miniDV which uses a similar DCT compression scheme the parameters are pre selected and fixed for the application The compression method is usually lossy meaning that some original image information is lost and cannot be restored possibly affecting image quality There is an optional lossless mode defined in the JPEG standard However this mode is not widely supported in products There is also an interlaced progressive JPEG format in which data is compressed in multiple passes of progressively higher detail This is ideal for large images that will be displayed while downloading over a slow connection allowing a reasonable preview after receiving only a portion of the data However support for progressive JPEGs is not universal When progressive JPEGs are received by programs that do not support them such as versions of Internet Explorer before Windows 7 41 the software displays the image only after it has been completely downloaded There are also many medical imaging traffic and camera applications that create and process 12 bit JPEG images both grayscale and color 12 bit JPEG format is included in an Extended part of the JPEG specification The libjpeg codec supports 12 bit JPEG and there even exists a high performance version 42 Lossless editing Edit Several alterations to a JPEG image can be performed losslessly that is without recompression and the associated quality loss as long as the image size is a multiple of 1 MCU block Minimum Coded Unit usually 16 pixels in both directions for 4 2 0 chroma subsampling Utilities that implement this include jpegtran and its GUI Jpegcrop IrfanView using JPG Lossless Crop PlugIn and JPG Lossless Rotation PlugIn which require installing the JPG TRANSFORM plugin FastStone Image Viewer using Lossless Crop to File and JPEG Lossless Rotate XnViewMP using JPEG lossless transformations ACDSee supports lossless rotation but not lossless cropping with its Force lossless JPEG operations option Blocks can be rotated in 90 degree increments flipped in the horizontal vertical and diagonal axes and moved about in the image Not all blocks from the original image need to be used in the modified one The top and left edge of a JPEG image must lie on an 8 8 pixel block boundary but the bottom and right edge need not do so This limits the possible lossless crop operations and also prevents flips and rotations of an image whose bottom or right edge does not lie on a block boundary for all channels because the edge would end up on top or left where as aforementioned a block boundary is obligatory Rotations where the image is not a multiple of 8 or 16 which value depends upon the chroma subsampling are not lossless Rotating such an image causes the blocks to be recomputed which results in loss of quality 43 When using lossless cropping if the bottom or right side of the crop region is not on a block boundary then the rest of the data from the partially used blocks will still be present in the cropped file and can be recovered It is also possible to transform between baseline and progressive formats without any loss of quality since the only difference is the order in which the coefficients are placed in the file Furthermore several JPEG images can be losslessly joined as long as they were saved with the same quality and the edges coincide with block boundaries JPEG files EditThe file format known as JPEG Interchange Format JIF is specified in Annex B of the standard However this pure file format is rarely used primarily because of the difficulty of programming encoders and decoders that fully implement all aspects of the standard and because of certain shortcomings of the standard Color space definition Component sub sampling registration Pixel aspect ratio definition Several additional standards have evolved to address these issues The first of these released in 1992 was the JPEG File Interchange Format or JFIF followed in recent years by Exchangeable image file format Exif and ICC color profiles Both of these formats use the actual JIF byte layout consisting of different markers but in addition employ one of the JIF standard s extension points namely the application markers JFIF uses APP0 while Exif uses APP1 Within these segments of the file that were left for future use in the JIF standard and are not read by it these standards add specific metadata Thus in some ways JFIF is a cut down version of the JIF standard in that it specifies certain constraints such as not allowing all the different encoding modes while in other ways it is an extension of JIF due to the added metadata The documentation for the original JFIF standard states 44 JPEG File Interchange Format is a minimal file format which enables JPEG bitstreams to be exchanged between a wide variety of platforms and applications This minimal format does not include any of the advanced features found in the TIFF JPEG specification or any application specific file format Nor should it for the only purpose of this simplified format is to allow the exchange of JPEG compressed images Image files that employ JPEG compression are commonly called JPEG files and are stored in variants of the JIF image format Most image capture devices such as digital cameras that output JPEG are actually creating files in the Exif format the format that the camera industry has standardized on for metadata interchange On the other hand since the Exif standard does not allow color profiles most image editing software stores JPEG in JFIF format and also includes the APP1 segment from the Exif file to include the metadata in an almost compliant way the JFIF standard is interpreted somewhat flexibly 45 Strictly speaking the JFIF and Exif standards are incompatible because each specifies that its marker segment APP0 or APP1 respectively appear first In practice most JPEG files contain a JFIF marker segment that precedes the Exif header This allows older readers to correctly handle the older format JFIF segment while newer readers also decode the following Exif segment being less strict about requiring it to appear first JPEG filename extensions Edit The most common filename extensions for files employing JPEG compression are jpg and jpeg though jpe jfif and jif are also used citation needed It is also possible for JPEG data to be embedded in other file types TIFF encoded files often embed a JPEG image as a thumbnail of the main image and MP3 files can contain a JPEG of cover art in the ID3v2 tag Color profile Edit Many JPEG files embed an ICC color profile color space Commonly used color profiles include sRGB and Adobe RGB Because these color spaces use a non linear transformation the dynamic range of an 8 bit JPEG file is about 11 stops see gamma curve If the image doesn t specify color profile information untagged the color space is assumed to be sRGB for the purposes of display on webpages 46 47 Syntax and structure EditA JPEG image consists of a sequence of segments each beginning with a marker each of which begins with a 0xFF byte followed by a byte indicating what kind of marker it is Some markers consist of just those two bytes others are followed by two bytes high then low indicating the length of marker specific payload data that follows The length includes the two bytes for the length but not the two bytes for the marker Some markers are followed by entropy coded data the length of such a marker does not include the entropy coded data Note that consecutive 0xFF bytes are used as fill bytes for padding purposes although this fill byte padding should only ever take place for markers immediately following entropy coded scan data see JPEG specification section B 1 1 2 and E 1 2 for details specifically In all cases where markers are appended after the compressed data optional 0xFF fill bytes may precede the marker Within the entropy coded data after any 0xFF byte a 0x00 byte is inserted by the encoder before the next byte so that there does not appear to be a marker where none is intended preventing framing errors Decoders must skip this 0x00 byte This technique called byte stuffing see JPEG specification section F 1 2 3 is only applied to the entropy coded data not to marker payload data Note however that entropy coded data has a few markers of its own specifically the Reset markers 0xD0 through 0xD7 which are used to isolate independent chunks of entropy coded data to allow parallel decoding and encoders are free to insert these Reset markers at regular intervals although not all encoders do this Common JPEG markers 48 Short name Bytes Payload Name CommentsSOI 0xFF 0xD8 none Start Of ImageSOF0 0xFF 0xC0 variable size Start Of Frame baseline DCT Indicates that this is a baseline DCT based JPEG and specifies the width height number of components and component subsampling e g 4 2 0 SOF2 0xFF 0xC2 variable size Start Of Frame progressive DCT Indicates that this is a progressive DCT based JPEG and specifies the width height number of components and component subsampling e g 4 2 0 DHT 0xFF 0xC4 variable size Define Huffman Table s Specifies one or more Huffman tables DQT 0xFF 0xDB variable size Define Quantization Table s Specifies one or more quantization tables DRI 0xFF 0xDD 4 bytes Define Restart Interval Specifies the interval between RSTn markers in Minimum Coded Units MCUs This marker is followed by two bytes indicating the fixed size so it can be treated like any other variable size segment SOS 0xFF 0xDA variable size Start Of Scan Begins a top to bottom scan of the image In baseline DCT JPEG images there is generally a single scan Progressive DCT JPEG images usually contain multiple scans This marker specifies which slice of data it will contain and is immediately followed by entropy coded data RSTn 0xFF 0xDn n 0 7 none Restart Inserted every r macroblocks where r is the restart interval set by a DRI marker Not used if there was no DRI marker The low three bits of the marker code cycle in value from 0 to 7 APPn 0xFF 0xEn variable size Application specific For example an Exif JPEG file uses an APP1 marker to store metadata laid out in a structure based closely on TIFF COM 0xFF 0xFE variable size Comment Contains a text comment EOI 0xFF 0xD9 none End Of ImageThere are other Start Of Frame markers that introduce other kinds of JPEG encodings Since several vendors might use the same APPn marker type application specific markers often begin with a standard or vendor name e g Exif or Adobe or some other identifying string At a restart marker block to block predictor variables are reset and the bitstream is synchronized to a byte boundary Restart markers provide means for recovery after bitstream error such as transmission over an unreliable network or file corruption Since the runs of macroblocks between restart markers may be independently decoded these runs may be decoded in parallel JPEG codec example EditAlthough a JPEG file can be encoded in various ways most commonly it is done with JFIF encoding The encoding process consists of several steps The representation of the colors in the image is converted from RGB to Y CBCR consisting of one luma component Y representing brightness and two chroma components CB and CR representing color This step is sometimes skipped The resolution of the chroma data is reduced usually by a factor of 2 or 3 This reflects the fact that the eye is less sensitive to fine color details than to fine brightness details The image is split into blocks of 8 8 pixels and for each block each of the Y CB and CR data undergoes the discrete cosine transform DCT A DCT is similar to a Fourier transform in the sense that it produces a kind of spatial frequency spectrum The amplitudes of the frequency components are quantized Human vision is much more sensitive to small variations in color or brightness over large areas than to the strength of high frequency brightness variations Therefore the magnitudes of the high frequency components are stored with a lower accuracy than the low frequency components The quality setting of the encoder for example 50 or 95 on a scale of 0 100 in the Independent JPEG Group s library 49 affects to what extent the resolution of each frequency component is reduced If an excessively low quality setting is used the high frequency components are discarded altogether The resulting data for all 8 8 blocks is further compressed with a lossless algorithm a variant of Huffman encoding The decoding process reverses these steps except the quantization because it is irreversible In the remainder of this section the encoding and decoding processes are described in more detail Encoding Edit Many of the options in the JPEG standard are not commonly used and as mentioned above most image software uses the simpler JFIF format when creating a JPEG file which among other things specifies the encoding method Here is a brief description of one of the more common methods of encoding when applied to an input that has 24 bits per pixel eight each of red green and blue This particular option is a lossy data compression method Color space transformation Edit First the image should be converted from RGB by default sRGB 46 47 but other color spaces are possible into a different color space called Y CBCR or informally YCbCr It has three components Y CB and CR the Y component represents the brightness of a pixel and the CB and CR components represent the chrominance split into blue and red components This is basically the same color space as used by digital color television as well as digital video including video DVDs The Y CBCR color space conversion allows greater compression without a significant effect on perceptual image quality or greater perceptual image quality for the same compression The compression is more efficient because the brightness information which is more important to the eventual perceptual quality of the image is confined to a single channel This more closely corresponds to the perception of color in the human visual system The color transformation also improves compression by statistical decorrelation A particular conversion to Y CBCR is specified in the JFIF standard and should be performed for the resulting JPEG file to have maximum compatibility However some JPEG implementations in highest quality mode do not apply this step and instead keep the color information in the RGB color model 50 where the image is stored in separate channels for red green and blue brightness components This results in less efficient compression and would not likely be used when file size is especially important Downsampling Edit Due to the densities of color and brightness sensitive receptors in the human eye humans can see considerably more fine detail in the brightness of an image the Y component than in the hue and color saturation of an image the Cb and Cr components Using this knowledge encoders can be designed to compress images more efficiently The transformation into the Y CBCR color model enables the next usual step which is to reduce the spatial resolution of the Cb and Cr components called downsampling or chroma subsampling The ratios at which the downsampling is ordinarily done for JPEG images are 4 4 4 no downsampling 4 2 2 reduction by a factor of 2 in the horizontal direction or most commonly 4 2 0 reduction by a factor of 2 in both the horizontal and vertical directions For the rest of the compression process Y Cb and Cr are processed separately and in a very similar manner Block splitting Edit After subsampling each channel must be split into 8 8 blocks Depending on chroma subsampling this yields Minimum Coded Unit MCU blocks of size 8 8 4 4 4 no subsampling 16 8 4 2 2 or most commonly 16 16 4 2 0 In video compression MCUs are called macroblocks If the data for a channel does not represent an integer number of blocks then the encoder must fill the remaining area of the incomplete blocks with some form of dummy data Filling the edges with a fixed color for example black can create ringing artifacts along the visible part of the border repeating the edge pixels is a common technique that reduces but does not necessarily eliminate such artifacts and more sophisticated border filling techniques can also be applied Discrete cosine transform Edit The 8 8 sub image shown in 8 bit grayscale Next each 8 8 block of each component Y Cb Cr is converted to a frequency domain representation using a normalized two dimensional type II discrete cosine transform DCT see Citation 1 in discrete cosine transform The DCT is sometimes referred to as type II DCT in the context of a family of transforms as in discrete cosine transform and the corresponding inverse IDCT is denoted as type III DCT As an example one such 8 8 8 bit subimage might be 52 55 61 66 70 61 64 73 63 59 55 90 109 85 69 72 62 59 68 113 144 104 66 73 63 58 71 122 154 106 70 69 67 61 68 104 126 88 68 70 79 65 60 70 77 68 58 75 85 71 64 59 55 61 65 83 87 79 69 68 65 76 78 94 displaystyle left begin array rrrrrrrr 52 amp 55 amp 61 amp 66 amp 70 amp 61 amp 64 amp 73 63 amp 59 amp 55 amp 90 amp 109 amp 85 amp 69 amp 72 62 amp 59 amp 68 amp 113 amp 144 amp 104 amp 66 amp 73 63 amp 58 amp 71 amp 122 amp 154 amp 106 amp 70 amp 69 67 amp 61 amp 68 amp 104 amp 126 amp 88 amp 68 amp 70 79 amp 65 amp 60 amp 70 amp 77 amp 68 amp 58 amp 75 85 amp 71 amp 64 amp 59 amp 55 amp 61 amp 65 amp 83 87 amp 79 amp 69 amp 68 amp 65 amp 76 amp 78 amp 94 end array right Before computing the DCT of the 8 8 block its values are shifted from a positive range to one centered on zero For an 8 bit image each entry in the original block falls in the range 0 255 displaystyle 0 255 The midpoint of the range in this case the value 128 is subtracted from each entry to produce a data range that is centered on zero so that the modified range is 128 127 displaystyle 128 127 This step reduces the dynamic range requirements in the DCT processing stage that follows This step results in the following values g x 76 73 67 62 58 67 64 55 65 69 73 38 19 43 59 56 66 69 60 15 16 24 62 55 65 70 57 6 26 22 58 59 61 67 60 24 2 40 60 58 49 63 68 58 51 60 70 53 43 57 64 69 73 67 63 45 41 49 59 60 63 52 50 34 y displaystyle g begin array c x longrightarrow left begin array rrrrrrrr 76 amp 73 amp 67 amp 62 amp 58 amp 67 amp 64 amp 55 65 amp 69 amp 73 amp 38 amp 19 amp 43 amp 59 amp 56 66 amp 69 amp 60 amp 15 amp 16 amp 24 amp 62 amp 55 65 amp 70 amp 57 amp 6 amp 26 amp 22 amp 58 amp 59 61 amp 67 amp 60 amp 24 amp 2 amp 40 amp 60 amp 58 49 amp 63 amp 68 amp 58 amp 51 amp 60 amp 70 amp 53 43 amp 57 amp 64 amp 69 amp 73 amp 67 amp 63 amp 45 41 amp 49 amp 59 amp 60 amp 63 amp 52 amp 50 amp 34 end array right end array Bigg downarrow y The DCT transforms an 8 8 block of input values to a linear combination of these 64 patterns The patterns are referred to as the two dimensional DCT basis functions and the output values are referred to as transform coefficients The horizontal index is u displaystyle u and the vertical index is v displaystyle v The next step is to take the two dimensional DCT which is given by G u v 1 4 a u a v x 0 7 y 0 7 g x y cos 2 x 1 u p 16 cos 2 y 1 v p 16 displaystyle G u v frac 1 4 alpha u alpha v sum x 0 7 sum y 0 7 g x y cos left frac 2x 1 u pi 16 right cos left frac 2y 1 v pi 16 right where u displaystyle u is the horizontal spatial frequency for the integers 0 u lt 8 displaystyle 0 leq u lt 8 v displaystyle v is the vertical spatial frequency for the integers 0 v lt 8 displaystyle 0 leq v lt 8 a u 1 2 if u 0 1 otherwise displaystyle alpha u begin cases frac 1 sqrt 2 amp mbox if u 0 1 amp mbox otherwise end cases is a normalizing scale factor to make the transformation orthonormal g x y displaystyle g x y is the pixel value at coordinates x y displaystyle x y G u v displaystyle G u v is the DCT coefficient at coordinates u v displaystyle u v If we perform this transformation on our matrix above we get the following rounded to the nearest two digits beyond the decimal point G u 415 38 30 19 61 20 27 24 56 12 20 10 2 39 0 46 4 47 21 86 60 76 10 25 13 15 7 09 8 54 4 88 46 83 7 37 77 13 24 56 28 91 9 93 5 42 5 65 48 53 12 07 34 10 14 76 10 24 6 30 1 83 1 95 12 12 6 55 13 20 3 95 1 87 1 75 2 79 3 14 7 73 2 91 2 38 5 94 2 38 0 94 4 30 1 85 1 03 0 18 0 42 2 42 0 88 3 02 4 12 0 66 0 17 0 14 1 07 4 19 1 17 0 10 0 50 1 68 v displaystyle G begin array c u longrightarrow left begin array rrrrrrrr 415 38 amp 30 19 amp 61 20 amp 27 24 amp 56 12 amp 20 10 amp 2 39 amp 0 46 4 47 amp 21 86 amp 60 76 amp 10 25 amp 13 15 amp 7 09 amp 8 54 amp 4 88 46 83 amp 7 37 amp 77 13 amp 24 56 amp 28 91 amp 9 93 amp 5 42 amp 5 65 48 53 amp 12 07 amp 34 10 amp 14 76 amp 10 24 amp 6 30 amp 1 83 amp 1 95 12 12 amp 6 55 amp 13 20 amp 3 95 amp 1 87 amp 1 75 amp 2 79 amp 3 14 7 73 amp 2 91 amp 2 38 amp 5 94 amp 2 38 amp 0 94 amp 4 30 amp 1 85 1 03 amp 0 18 amp 0 42 amp 2 42 amp 0 88 amp 3 02 amp 4 12 amp 0 66 0 17 amp 0 14 amp 1 07 amp 4 19 amp 1 17 amp 0 10 amp 0 50 amp 1 68 end array right end array Bigg downarrow v Note the top left corner entry with the rather large magnitude This is the DC coefficient also called the constant component which defines the basic hue for the entire block The remaining 63 coefficients are the AC coefficients also called the alternating components 51 The advantage of the DCT is its tendency to aggregate most of the signal in one corner of the result as may be seen above The quantization step to follow accentuates this effect while simultaneously reducing the overall size of the DCT coefficients resulting in a signal that is easy to compress efficiently in the entropy stage The DCT temporarily increases the bit depth of the data since the DCT coefficients of an 8 bit component image take up to 11 or more bits depending on fidelity of the DCT calculation to store This may force the codec to temporarily use 16 bit numbers to hold these coefficients doubling the size of the image representation at this point these values are typically reduced back to 8 bit values by the quantization step The temporary increase in size at this stage is not a performance concern for most JPEG implementations since typically only a very small part of the image is stored in full DCT form at any given time during the image encoding or decoding process Quantization Edit The human eye is good at seeing small differences in brightness over a relatively large area but not so good at distinguishing the exact strength of a high frequency brightness variation This allows one to greatly reduce the amount of information in the high frequency components This is done by simply dividing each component in the frequency domain by a constant for that component and then rounding to the nearest integer This rounding operation is the only lossy operation in the whole process other than chroma subsampling if the DCT computation is performed with sufficiently high precision As a result of this it is typically the case that many of the higher frequency components are rounded to zero and many of the rest become small positive or negative numbers which take many fewer bits to represent The elements in the quantization matrix control the compression ratio with larger values producing greater compression A typical quantization matrix for a quality of 50 as specified in the original JPEG Standard is as follows Q 16 11 10 16 24 40 51 61 12 12 14 19 26 58 60 55 14 13 16 24 40 57 69 56 14 17 22 29 51 87 80 62 18 22 37 56 68 109 103 77 24 35 55 64 81 104 113 92 49 64 78 87 103 121 120 101 72 92 95 98 112 100 103 99 displaystyle Q begin bmatrix 16 amp 11 amp 10 amp 16 amp 24 amp 40 amp 51 amp 61 12 amp 12 amp 14 amp 19 amp 26 amp 58 amp 60 amp 55 14 amp 13 amp 16 amp 24 amp 40 amp 57 amp 69 amp 56 14 amp 17 amp 22 amp 29 amp 51 amp 87 amp 80 amp 62 18 amp 22 amp 37 amp 56 amp 68 amp 109 amp 103 amp 77 24 amp 35 amp 55 amp 64 amp 81 amp 104 amp 113 amp 92 49 amp 64 amp 78 amp 87 amp 103 amp 121 amp 120 amp 101 72 amp 92 amp 95 amp 98 amp 112 amp 100 amp 103 amp 99 end bmatrix The quantized DCT coefficients are computed with B j k r o u n d G j k Q j k for j 0 1 2 7 k 0 1 2 7 displaystyle B j k mathrm round left frac G j k Q j k right mbox for j 0 1 2 ldots 7 k 0 1 2 ldots 7 where G displaystyle G is the unquantized DCT coefficients Q displaystyle Q is the quantization matrix above and B displaystyle B is the quantized DCT coefficients Using this quantization matrix with the DCT coefficient matrix from above results in Left a final image is built up from a series of basis functions Right each of the DCT basis functions that comprise the image and the corresponding weighting coefficient Middle the basis function after multiplication by the coefficient this component is added to the final image For clarity the 8 8 macroblock in this example is magnified by 10x using bilinear interpolation B 26 3 6 2 2 1 0 0 0 2 4 1 1 0 0 0 3 1 5 1 1 0 0 0 3 1 2 1 0 0 0 0 1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 displaystyle B left begin array rrrrrrrr 26 amp 3 amp 6 amp 2 amp 2 amp 1 amp 0 amp 0 0 amp 2 amp 4 amp 1 amp 1 amp 0 amp 0 amp 0 3 amp 1 amp 5 amp 1 amp 1 amp 0 amp 0 amp 0 3 amp 1 amp 2 amp 1 amp 0 amp 0 amp 0 amp 0 1 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 end array right For example using 415 the DC coefficient and rounding to the nearest integer r o u n d 415 37 16 r o u n d 25 96 26 displaystyle mathrm round left frac 415 37 16 right mathrm round left 25 96 right 26 Notice that most of the higher frequency elements of the sub block i e those with an x or y spatial frequency greater than 4 are quantized into zero values Entropy coding Edit Main article Entropy encoding Zigzag ordering of JPEG image components Entropy coding is a special form of lossless data compression It involves arranging the image components in a zigzag order employing run length encoding RLE algorithm that groups similar frequencies together inserting length coding zeros and then using Huffman coding on what is left The JPEG standard also allows but does not require decoders to support the use of arithmetic coding which is mathematically superior to Huffman coding However this feature has rarely been used as it was historically covered by patents requiring royalty bearing licenses and because it is slower to encode and decode compared to Huffman coding Arithmetic coding typically makes files about 5 7 smaller The previous quantized DC coefficient is used to predict the current quantized DC coefficient The difference between the two is encoded rather than the actual value The encoding of the 63 quantized AC coefficients does not use such prediction differencing The zigzag sequence for the above quantized coefficients are shown below The format shown is just for ease of understanding viewing 26 3 0 3 2 62 4 1 31 1 5 1 2 1 1 1 2 0 00 0 0 1 1 0 00 0 0 0 0 0 0 00 0 0 0 0 0 00 0 0 0 0 00 0 0 0 00 0 0 00 0 00 00If the i th block is represented by B i displaystyle B i and positions within each block are represented by p q displaystyle p q where p 0 1 7 displaystyle p 0 1 7 and q 0 1 7 displaystyle q 0 1 7 then any coefficient in the DCT image can be represented as B i p q displaystyle B i p q Thus in the above scheme the order of encoding pixels for the i th block is B i 0 0 displaystyle B i 0 0 B i 0 1 displaystyle B i 0 1 B i 1 0 displaystyle B i 1 0 B i 2 0 displaystyle B i 2 0 B i 1 1 displaystyle B i 1 1 B i 0 2 displaystyle B i 0 2 B i 0 3 displaystyle B i 0 3 B i 1 2 displaystyle B i 1 2 and so on Baseline sequential JPEG encoding and decoding processes This encoding mode is called baseline sequential encoding Baseline JPEG also supports progressive encoding While sequential encoding encodes coefficients of a single block at a time in a zigzag manner progressive encoding encodes similar positioned batch of coefficients of all blocks in one go called a scan followed by the next batch of coefficients of all blocks and so on For example if the image is divided into N 8 8 blocks B 0 B 1 B 2 B n 1 displaystyle B 0 B 1 B 2 B n 1 then a 3 scan progressive encoding encodes DC component B i 0 0 displaystyle B i 0 0 for all blocks i e for all i 0 1 2 N 1 displaystyle i 0 1 2 N 1 in first scan This is followed by the second scan which encoding a few more components assuming four more components they are B i 0 1 displaystyle B i 0 1 to B i 1 1 displaystyle B i 1 1 still in a zigzag manner coefficients of all blocks so the sequence is B 0 0 1 B 0 1 0 B 0 2 0 B 0 1 1 B 1 0 1 B 1 1 0 B N 2 0 B N 1 1 displaystyle B 0 0 1 B 0 1 0 B 0 2 0 B 0 1 1 B 1 0 1 B 1 1 0 B N 2 0 B N 1 1 followed by all the remained coefficients of all blocks in the last scan Once all similar positioned coefficients have been encoded the next position to be encoded is the one occurring next in the zigzag traversal as indicated in the figure above It has been found that baseline progressive JPEG encoding usually gives better compression as compared to baseline sequential JPEG due to the ability to use different Huffman tables see below tailored for different frequencies on each scan or pass which includes similar positioned coefficients though the difference is not too large In the rest of the article it is assumed that the coefficient pattern generated is due to sequential mode In order to encode the above generated coefficient pattern JPEG uses Huffman encoding The JPEG standard provides general purpose Huffman tables encoders may also choose to generate Huffman tables optimized for the actual frequency distributions in images being encoded The process of encoding the zig zag quantized data begins with a run length encoding explained below where x is the non zero quantized AC coefficient RUNLENGTH is the number of zeroes that came before this non zero AC coefficient SIZE is the number of bits required to represent x AMPLITUDE is the bit representation of x The run length encoding works by examining each non zero AC coefficient x and determining how many zeroes came before the previous AC coefficient With this information two symbols are created Symbol 1 Symbol 2 RUNLENGTH SIZE AMPLITUDE Both RUNLENGTH and SIZE rest on the same byte meaning that each only contains four bits of information The higher bits deal with the number of zeroes while the lower bits denote the number of bits necessary to encode the value of x This has the immediate implication of Symbol 1 being only able store information regarding the first 15 zeroes preceding the non zero AC coefficient However JPEG defines two special Huffman code words One is for ending the sequence prematurely when the remaining coefficients are zero called End of Block or EOB and another when the run of zeroes goes beyond 15 before reaching a non zero AC coefficient In such a case where 16 zeroes are encountered before a given non zero AC coefficient Symbol 1 is encoded specially as 15 0 0 The overall process continues until EOB denoted by 0 0 is reached With this in mind the sequence from earlier becomes 0 2 3 1 2 3 0 1 2 0 2 6 0 1 2 0 1 4 0 1 1 0 2 3 0 1 1 0 1 1 0 2 5 0 1 1 0 1 2 0 1 1 0 1 1 0 1 1 0 1 2 5 1 1 0 1 1 0 0 The first value in the matrix 26 is the DC coefficient it is not encoded the same way See above From here frequency calculations are made based on occurrences of the coefficients In our example block most of the quantized coefficients are small numbers that are not preceded immediately by a zero coefficient These more frequent cases will be represented by shorter code words Compression ratio and artifacts Edit This image shows the pixels that are different between a non compressed image and the same image JPEG compressed with a quality setting of 50 Darker means a larger difference Note especially the changes occurring near sharp edges and having a block like shape The original image The compressed 8 8 squares are visible in the scaled up picture together with other visual artifacts of the lossy compression The resulting compression ratio can be varied according to need by being more or less aggressive in the divisors used in the quantization phase Ten to one compression usually results in an image that cannot be distinguished by eye from the original A compression ratio of 100 1 is usually possible but will look distinctly artifacted compared to the original The appropriate level of compression depends on the use to which the image will be put External image Illustration of edge busyness 52 Those who use the World Wide Web may be familiar with the irregularities known as compression artifacts that appear in JPEG images which may take the form of noise around contrasting edges especially curves and corners or blocky images These are due to the quantization step of the JPEG algorithm They are especially noticeable around sharp corners between contrasting colors text is a good example as it contains many such corners The analogous artifacts in MPEG video are referred to as mosquito noise as the resulting edge busyness and spurious dots which change over time resemble mosquitoes swarming around the object 52 53 These artifacts can be reduced by choosing a lower level of compression they may be completely avoided by saving an image using a lossless file format though this will result in a larger file size The images created with ray tracing programs have noticeable blocky shapes on the terrain Certain low intensity compression artifacts might be acceptable when simply viewing the images but can be emphasized if the image is subsequently processed usually resulting in unacceptable quality Consider the example below demonstrating the effect of lossy compression on an edge detection processing step Image Lossless compression Lossy compressionOriginal Processed byCanny edge detector Some programs allow the user to vary the amount by which individual blocks are compressed Stronger compression is applied to areas of the image that show fewer artifacts This way it is possible to manually reduce JPEG file size with less loss of quality Since the quantization stage always results in a loss of information JPEG standard is always a lossy compression codec Information is lost both in quantizing and rounding of the floating point numbers Even if the quantization matrix is a matrix of ones information will still be lost in the rounding step Decoding Edit Decoding to display the image consists of doing all the above in reverse Taking the DCT coefficient matrix after adding the difference of the DC coefficient back in 26 3 6 2 2 1 0 0 0 2 4 1 1 0 0 0 3 1 5 1 1 0 0 0 3 1 2 1 0 0 0 0 1 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 displaystyle left begin array rrrrrrrr 26 amp 3 amp 6 amp 2 amp 2 amp 1 amp 0 amp 0 0 amp 2 amp 4 amp 1 amp 1 amp 0 amp 0 amp 0 3 amp 1 amp 5 amp 1 amp 1 amp 0 amp 0 amp 0 3 amp 1 amp 2 amp 1 amp 0 amp 0 amp 0 amp 0 1 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 end array right and taking the entry for entry product with the quantization matrix from above results in 416 33 60 32 48 40 0 0 0 24 56 19 26 0 0 0 42 13 80 24 40 0 0 0 42 17 44 29 0 0 0 0 18 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 displaystyle left begin array rrrrrrrr 416 amp 33 amp 60 amp 32 amp 48 amp 40 amp 0 amp 0 0 amp 24 amp 56 amp 19 amp 26 amp 0 amp 0 amp 0 42 amp 13 amp 80 amp 24 amp 40 amp 0 amp 0 amp 0 42 amp 17 amp 44 amp 29 amp 0 amp 0 amp 0 amp 0 18 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 amp 0 end array right which closely resembles the original DCT coefficient matrix for the top left portion The next step is to take the two dimensional inverse DCT a 2D type III DCT which is given by f x y 1 4 u 0 7 v 0 7 a u a v F u v cos 2 x 1 u p 16 cos 2 y 1 v p 16 displaystyle f x y frac 1 4 sum u 0 7 sum v 0 7 alpha u alpha v F u v cos left frac 2x 1 u pi 16 right cos left frac 2y 1 v pi 16 right where x displaystyle x is the pixel row for the integers 0 x lt 8 displaystyle 0 leq x lt 8 y displaystyle y is the pixel column for the integers 0 y lt 8 displaystyle 0 leq y lt 8 a u displaystyle alpha u is the normalizing scale factor defined earlier for the integers 0 u lt 8 displaystyle 0 leq u lt 8 F u v displaystyle F u v is the approximated DCT coefficient at coordinates u v displaystyle u v f x y displaystyle f x y is the reconstructed pixel value at coordinates x y displaystyle x y Rounding the output to integer values since the original had integer values results in an image with values still shifted down by 128 Slight differences are noticeable between the original top and decompressed image bottom which is most readily seen in the bottom left corner 66 63 71 68 56 65 68 46 71 73 72 46 20 41 66 57 70 78 68 17 20 14 61 63 63 73 62 8 27 14 60 58 58 65 61 27 6 40 68 50 57 57 64 58 48 66 72 47 53 46 61 74 65 63 62 45 47 34 53 74 60 47 47 41 displaystyle left begin array rrrrrrrr 66 amp 63 amp 71 amp 68 amp 56 amp 65 amp 68 amp 46 71 amp 73 amp 72 amp 46 amp 20 amp 41 amp 66 amp 57 70 amp 78 amp 68 amp 17 amp 20 amp 14 amp 61 amp 63 63 amp 73 amp 62 amp 8 amp 27 amp 14 amp 60 amp 58 58 amp 65 amp 61 amp 27 amp 6 amp 40 amp 68 amp 50 57 amp 57 amp 64 amp 58 amp 48 amp 66 amp 72 amp 47 53 amp 46 amp 61 amp 74 amp 65 amp 63 amp 62 amp 45 47 amp 34 amp 53 amp 74 amp 60 amp 47 amp 47 amp 41 end array right and adding 128 to each entry 62 65 57 60 72 63 60 82 57 55 56 82 108 87 62 71 58 50 60 111 148 114 67 65 65 55 66 120 155 114 68 70 70 63 67 101 122 88 60 78 71 71 64 70 80 62 56 81 75 82 67 54 63 65 66 83 81 94 75 54 68 81 81 87 displaystyle left begin array rrrrrrrr 62 amp 65 amp 57 amp 60 amp 72 amp 63 amp 60 amp 82 57 amp 55 amp 56 amp 82 amp 108 amp 87 amp 62 amp 71 58 amp 50 amp 60 amp 111 amp 148 amp 114 amp 67 amp 65 65 amp 55 amp 66 amp 120 amp 155 amp 114 amp 68 amp 70 70 amp 63 amp 67 amp 101 amp 122 amp 88 amp 60 amp 78 71 amp 71 amp 64 amp 70 amp 80 amp 62 amp 56 amp 81 75 amp 82 amp 67 amp 54 amp 63 amp 65 amp 66 amp 83 81 amp 94 amp 75 amp 54 amp 68 amp 81 amp 81 amp 87 end array right This is the decompressed subimage In general the decompression process may produce values outside the original input range of 0 255 displaystyle 0 255 If this occurs the decoder needs to clip the output values so as to keep them within that range to prevent overflow when storing the decompressed image with the original bit depth The decompressed subimage can be compared to the original subimage also see images to the right by taking the difference original uncompressed results in the following error values 10 10 4 6 2 2 4 9 6 4 1 8 1 2 7 1 4 9 8 2 4 10 1 8 2 3 5 2 1 8 2 1 3 2 1 3 4 0 8 8 8 6 4 0 3 6 2 6 10 11 3 5 8 4 1 0 6 15 6 14 3 5 3 7 displaystyle left begin array rrrrrrrr 10 amp 10 amp 4 amp 6 amp 2 amp 2 amp 4 amp 9 6 amp 4 amp 1 amp 8 amp 1 amp 2 amp 7 amp 1 4 amp 9 amp 8 amp 2 amp 4 amp 10 amp 1 amp 8 2 amp 3 amp 5 amp 2 amp 1 amp 8 amp 2 amp 1 3 amp 2 amp 1 amp 3 amp 4 amp 0 amp 8 amp 8 8 amp 6 amp 4 amp 0 amp 3 amp 6 amp 2 amp 6 10 amp 11 amp 3 amp 5 amp 8 amp 4 amp 1 amp 0 6 amp 15 amp 6 amp 14 amp 3 amp 5 amp 3 amp 7 end array right with an average absolute error of about 5 values per pixels i e 1 64 x 0 7 y 0 7 e x y 4 8750 displaystyle frac 1 64 sum x 0 7 sum y 0 7 e x y 4 8750 The error is most noticeable in the bottom left corner where the bottom left pixel becomes darker than the pixel to its immediate right Required precision Edit The required implementation precision of a JPEG codec is implicitly defined through the requirements formulated for compliance to the JPEG standard These requirements are specified in ITU T Recommendation T 83 ISO IEC 10918 2 Unlike MPEG standards and many later JPEG standards the above document defines both required implementation precisions for the encoding and the decoding process of a JPEG codec by means of a maximal tolerable error of the forwards and inverse DCT in the DCT domain as determined by reference test streams For example the output of a decoder implementation must not exceed an error of one quantization unit in the DCT domain when applied to the reference testing codestreams provided as part of the above standard While unusual and unlike many other and more modern standards ITU T T 83 ISO IEC 10918 2 does not formulate error bounds in the image domain Effects of JPEG compression EditJPEG compression artifacts blend well into photographs with detailed non uniform textures allowing higher compression ratios Notice how a higher compression ratio first affects the high frequency textures in the upper left corner of the image and how the contrasting lines become more fuzzy The very high compression ratio severely affects the quality of the image although the overall colors and image form are still recognizable However the precision of colors suffer less for a human eye than the precision of contours based on luminance This justifies the fact that images should be first transformed in a color model separating the luminance from the chromatic information before subsampling the chromatic planes which may also use lower quality quantization in order to preserve the precision of the luminance plane with more information bits Sample photographs Edit Visual impact of a jpeg compression on Photoshop on a picture of 4480x4480 pixels For information the uncompressed 24 bit RGB bitmap image below 73 242 pixels would require 219 726 bytes excluding all other information headers The filesizes indicated below include the internal JPEG information headers and some metadata For highest quality images Q 100 about 8 25 bits per color pixel is required On grayscale images a minimum of 6 5 bits per pixel is enough a comparable Q 100 quality color information requires about 25 more encoded bits The highest quality image below Q 100 is encoded at nine bits per color pixel the medium quality image Q 25 uses one bit per color pixel For most applications the quality factor should not go below 0 75 bit per pixel Q 12 5 as demonstrated by the low quality image The image at lowest quality uses only 0 13 bit per pixel and displays very poor color This is useful when the image will be displayed in a significantly scaled down size A method for creating better quantization matrices for a given image quality using PSNR instead of the Q factor is described in Minguillon amp Pujol 2001 54 Note The above images are not IEEE CCIR EBU test images and the encoder settings are not specified or available Image Quality Size bytes Compression ratio Comment Highest quality Q 100 81 447 2 7 1 Extremely minor artifacts High quality Q 50 14 679 15 1 Initial signs of subimage artifacts Medium quality Q 25 9 407 23 1 Stronger artifacts loss of high frequency information Low quality Q 10 4 787 46 1 Severe high frequency loss leads to obvious artifacts on subimage boundaries macroblocking Lowest quality Q 1 1 523 144 1 Extreme loss of color and detail the leaves are nearly unrecognizable dd The medium quality photo uses only 4 3 of the storage space required for the uncompressed image but has little noticeable loss of detail or visible artifacts However once a certain threshold of compression is passed compressed images show increasingly visible defects See the article on rate distortion theory for a mathematical explanation of this threshold effect A particular limitation of JPEG in this regard is its non overlapped 8 8 block transform structure More modern designs such as JPEG 2000 and JPEG XR exhibit a more graceful degradation of quality as the bit usage decreases by using transforms with a larger spatial extent for the lower frequency coefficients and by using overlapping transform basis functions Lossless further compression EditFrom 2004 to 2008 new research emerged on ways to further compress the data contained in JPEG images without modifying the represented image 55 56 57 58 This has applications in scenarios where the original image is only available in JPEG format and its size needs to be reduced for archiving or transmission Standard general purpose compression tools cannot significantly compress JPEG files Typically such schemes take advantage of improvements to the naive scheme for coding DCT coefficients which fails to take into account Correlations between magnitudes of adjacent coefficients in the same block Correlations between magnitudes of the same coefficient in adjacent blocks Correlations between magnitudes of the same coefficient block in different channels The DC coefficients when taken together resemble a downscale version of the original image multiplied by a scaling factor Well known schemes for lossless coding of continuous tone images can be applied achieving somewhat better compression than the Huffman coded DPCM used in JPEG Some standard but rarely used options already exist in JPEG to improve the efficiency of coding DCT coefficients the arithmetic coding option and the progressive coding option which produces lower bitrates because values for each coefficient are coded independently and each coefficient has a significantly different distribution Modern methods have improved on these techniques by reordering coefficients to group coefficients of larger magnitude together 55 using adjacent coefficients and blocks to predict new coefficient values 57 dividing blocks or coefficients up among a small number of independently coded models based on their statistics and adjacent values 56 57 and most recently by decoding blocks predicting subsequent blocks in the spatial domain and then encoding these to generate predictions for DCT coefficients 58 Typically such methods can compress existing JPEG files between 15 and 25 percent and for JPEGs compressed at low quality settings can produce improvements of up to 65 57 58 A freely available tool called packJPG is based on the 2007 paper Improved Redundancy Reduction for JPEG Files As of version 2 5k of 2016 it reports a typical 20 reduction by transcoding 59 JPEG XL ISO IEC 18181 of 2018 reports a similar reduction in its transcoding Derived formats for stereoscopic 3D EditJPEG Stereoscopic Edit An example of a stereoscopic JPS file JPS is a stereoscopic JPEG image used for creating 3D effects from 2D images It contains two static images one for the left eye and one for the right eye encoded as two side by side images in a single JPG file JPEG Stereoscopic JPS extension jps is a JPEG based format for stereoscopic images 60 61 It has a range of configurations stored in the JPEG APP3 marker field but usually contains one image of double width representing two images of identical size in cross eyed i e left frame on the right half of the image and vice versa side by side arrangement This file format can be viewed as a JPEG without any special software or can be processed for rendering in other modes JPEG Multi Picture Format Edit JPEG Multi Picture Format MPO extension mpo is a JPEG based format for storing multiple images in a single file It contains two or more JPEG files concatenated together 62 63 It also defines a JPEG APP2 marker segment for image description Various devices use it to store 3D images such as Fujifilm FinePix Real 3D W1 HTC Evo 3D JVC GY HMZ1U AVCHD MVC extension camcorder Nintendo 3DS Panasonic Lumix DMC TZ20 DMC TZ30 DMC TZ60 DMC TS4 FT4 and Sony DSC HX7V Other devices use it to store preview images that can be displayed on a TV In the last few years due to the growing use of stereoscopic images much effort has been spent by the scientific community to develop algorithms for stereoscopic image compression 64 65 Implementations EditA very important implementation of a JPEG codec is the free programming library libjpeg of the Independent JPEG Group It was first published in 1991 and was key for the success of the standard This library was used in countless applications 66 The development went quiet in 1998 when libjpeg resurfaced with the 2009 version 7 it broke ABI compatibility with previous versions Version 8 of 2010 introduced non standard extensions a decision criticized by the original IJG leader Tom Lane 67 libjpeg turbo forked from the 1998 libjpeg 6b improves on libjpeg with SIMD optimizations Originally seen as a maintained fork of libjpeg it has become more popular after the incompatible changes of 2009 68 69 In 2019 it became the ITU ISO IEC reference implementation as ISO IEC 10918 7 and ITU T T 873 70 ISO IEC Joint Photography Experts Group maintains the other reference software implementation under the JPEG XT heading It can encode both base JPEG ISO IEC 10918 1 and 18477 1 and JPEG XT extensions ISO IEC 18477 Parts 2 and 6 9 as well as JPEG LS ISO IEC 14495 71 There is persistent interest in encoding JPEG in unconventional ways that maximize image quality for a given file size In 2014 Mozilla created mozjpeg from libjpeg turbo a slower but higher quality encoder intended for web images 72 In 2016 JPEG on steroids was introduced as an option for the ISO JPEG XT reference implementation 73 In March 2017 Google released the open source project Guetzli which trades off a much longer encoding time for smaller file size similar to what Zopfli does for PNG and other lossless data formats 74 JPEG XT EditMain article JPEG XT JPEG XT ISO IEC 18477 was published in June 2015 it extends base JPEG format with support for higher integer bit depths up to 16 bit high dynamic range imaging and floating point coding lossless coding and alpha channel coding Extensions are backward compatible with the base JPEG JFIF file format and 8 bit lossy compressed image JPEG XT uses an extensible file format based on JFIF Extension layers are used to modify the JPEG 8 bit base layer and restore the high resolution image Existing software is forward compatible and can read the JPEG XT binary stream though it would only decode the base 8 bit layer 75 JPEG XL EditMain article JPEG XL JPEG XL ISO IEC 18181 was published in 2021 2022 It replaces the JPEG format with a new DCT based royalty free format and allows efficient transcoding as a storage option for traditional JPEG images 76 The new format is designed to exceed the still image compression performance shown by HEVC HM Daala and WebP It supports billion by billion pixel images up to 32 bit per component high dynamic range with the appropriate transfer functions PQ and HLG patch encoding of synthetic images such as bitmap fonts and gradients animated images alpha channel coding and a choice of RGB YCbCr ICtCp color encoding 77 78 79 80 See also EditBetter Portable Graphics a format based on intra frame encoding of the HEVC C Cube an early implementer of JPEG in chip form Comparison of graphics file formats Deblocking filter video the similar deblocking methods could be applied to JPEG Design rule for Camera File system DCF FELICS a lossless image codec File extensions Graphics editing program High Efficiency Image File Format image container format for HEVC and other image coding formats Lenna test image the traditional standard image used to test image processing algorithms Motion JPEG WebPReferences Edit a b c d e T 81 DIGITAL COMPRESSION AND CODING OF CONTINUOUS TONE STILL IMAGES REQUIREMENTS AND GUIDELINES PDF CCITT September 1992 Retrieved 12 July 2019 Definition of JPEG Collins English Dictionary Retrieved 2013 05 23 Haines Richard F Chuang Sherry L 1 July 1992 The effects of video compression on acceptability of images for monitoring life sciences experiments Technical report NASA NASA TP 3239 A 92040 NAS 1 60 3239 Retrieved 2016 03 13 The JPEG still image compression levels even with the large range of 5 1 to 120 1 in this study yielded equally high levels of acceptability a b Hudson Graham Leger Alain Niss Birger Sebestyen Istvan Vaaben Jorgen 31 August 2018 JPEG 1 standard 25 years past present and future reasons for a success Journal of Electronic Imaging 27 4 1 doi 10 1117 1 JEI 27 4 040901 S2CID 52164892 The JPEG Image Format Explained BT com BT Group 31 May 2018 Archived from the original on 5 August 2019 Retrieved 5 August 2019 Baraniuk Chris 15 October 2015 Copy Protections Could Come to JPEGs BBC News BBC Retrieved 13 September 2019 JPEG 25 Jahre und kein bisschen alt Heise online in German October 2016 Retrieved 5 September 2019 What Is a JPEG The Invisible Object You See Every Day The Atlantic 24 September 2013 Retrieved 13 September 2019 HTTP Archive Interesting Stats httparchive org Retrieved 2016 04 06 MIME Type Detection in Internet Explorer Microsoft Retrieved 2 November 2022 JPEG File Interchange Format PDF 3 September 2014 Archived from the original on 3 September 2014 Retrieved 16 October 2017 a href Template Cite web html title Template Cite web cite web a CS1 maint bot original URL status unknown link Why JPEG 2000 Never Took Off American National Standards Institute 10 July 2018 Retrieved 13 September 2019 a b c d Lemos Robert 23 July 2002 Finding patent truth in JPEG claim CNET Retrieved 13 July 2019 ISO IEC JTC 1 SC 29 2009 05 07 ISO IEC JTC 1 SC 29 WG 1 Coding of Still Pictures SC 29 WG 1 Structure Archived from the original on 2013 12 31 Retrieved 2009 11 11 a b ISO IEC JTC 1 SC 29 Programme of Work Allocated to SC 29 WG 1 Archived from the original on 2013 12 31 Retrieved 2009 11 07 ISO JTC 1 SC 29 Coding of audio picture multimedia and hypermedia information Retrieved 2009 11 11 a b JPEG Joint Photographic Experts Group JPEG Homepage Retrieved 2009 11 08 T 81 Information technology Digital compression and coding of continuous tone still images Requirements and guidelines Itu int Retrieved 2009 11 07 William B Pennebaker Joan L Mitchell 1993 JPEG still image data compression standard 3rd ed Springer p 291 ISBN 978 0 442 01272 4 ISO JTC 1 SC 29 Coding of audio picture multimedia and hypermedia information Retrieved 2009 11 07 SPIFF Still Picture Interchange File Format Library of Congress 30 January 2012 Archived from the original on 2018 07 31 Retrieved 2018 07 31 JPEG 2009 04 24 JPEG XR enters FDIS status JPEG File Interchange Format JFIF to be standardized as JPEG Part 5 Press release Archived from the original on 2009 10 08 Retrieved 2009 11 09 JPEG File Interchange Format JFIF ECMA TR 98 1st ed Ecma International 2009 Retrieved 2011 08 01 Forgent s JPEG Patent SourceForge 2002 Retrieved 13 July 2019 Concerning recent patent claims Jpeg org 2002 07 19 Archived from the original on 2007 07 14 Retrieved 2011 05 29 JPEG and JPEG2000 Between Patent Quarrel and Change of Technology Archived from the original on August 17 2004 Retrieved 2017 04 16 a href Template Cite web html title Template Cite web cite web a CS1 maint bot original URL status unknown link Kawamoto Dawn April 22 2005 Graphics patent suit fires back at Microsoft CNET News Retrieved 2023 01 20 Trademark Office Re examines Forgent JPEG Patent Publish com February 3 2006 Archived from the original on 2016 05 15 Retrieved 2009 01 28 USPTO Broadest Claims Forgent Asserts Against JPEG Standard Invalid Groklaw net May 26 2006 Retrieved 2007 07 21 Coding System for Reducing Redundancy Gauss ffii org Archived from the original on 2011 06 12 Retrieved 2011 05 29 JPEG Patent Claim Surrendered Public Patent Foundation November 2 2006 Retrieved 2006 11 03 Ex Parte Reexamination Certificate for U S Patent No 5 253 341 Archived from the original on June 2 2008 Workgroup Rozmanith Using Software Patents to Silence Critics Eupat ffii org Archived from the original on 2011 07 16 Retrieved 2011 05 29 A Bounty of 5 000 to Name Troll Tracker Ray Niro Wants To Know Who Is saying All Those Nasty Things About Him Law com Retrieved 2011 05 29 Reimer Jeremy 2008 02 05 Hunting trolls USPTO asked to reexamine broad image patent Arstechnica com Retrieved 2011 05 29 U S Patent Office Granting Reexamination on 5 253 341 C1 Judge Puts JPEG Patent On Ice Techdirt com 2008 04 30 Retrieved 2011 05 29 JPEG Patent s Single Claim Rejected And Smacked Down For Good Measure Techdirt com 2008 08 01 Retrieved 2011 05 29 Workgroup Princeton Digital Image Corporation Home Page Archived from the original on 2013 04 11 Retrieved 2013 05 01 Workgroup Article on Princeton Court Ruling Regarding GE License Agreement Archived from the original on 2016 03 09 Retrieved 2013 05 01 Progressive Decoding Overview Microsoft Developer Network Microsoft Retrieved 2012 03 23 Fastvideo May 2019 12 bit JPEG encoder on GPU Retrieved 2019 05 06 Why You Should Always Rotate Original JPEG Photos Losslessly Petapixel com 14 August 2012 Retrieved 16 October 2017 JFIF File Format as PDF PDF Tom Lane 1999 03 29 JPEG image compression FAQ Retrieved 2007 09 11 q 14 Why all the argument about file formats a b A Standard Default Color Space for the Internet sRGB www w3 org a b IEC 61966 2 1 1999 AMD1 2003 IEC Webstore webstore iec ch ISO IEC 10918 1 1993 E p 36 Thomas G Lane Advanced Features Compression parameter selection Using the IJG JPEG Library Ryan Dan 2012 06 20 E Learning Modules Dlr Associates Series AuthorHouse ISBN 9781468575200 DC AC Frequency Questions Doom9 s Forum forum doom9 org Retrieved 16 October 2017 a b Phuc Tue Le Dinh and Jacques Patry Video compression artifacts and MPEG noise reduction Archived 2006 03 14 at the Wayback Machine Video Imaging DesignLine February 24 2006 Retrieved May 28 2009 3 9 mosquito noise Form of edge busyness distortion sometimes associated with movement characterized by moving artifacts and or blotchy noise patterns superimposed over the objects resembling a mosquito flying around a person s head and shoulders ITU T Rec P 930 08 96 Principles of a reference impairment system for video Archived 2010 02 16 at the Wayback Machine Julia Minguillon Jaume Pujol April 2001 JPEG standard uniform quantization error modeling with applications to sequential and progressive operation modes PDF Electronic Imaging 10 2 475 485 Bibcode 2001JEI 10 475M doi 10 1117 1 1344592 hdl 10609 6263 a b I Bauermann and E Steinbacj Further Lossless Compression of JPEG Images Proc of Picture Coding Symposium PCS 2004 San Francisco US December 15 17 2004 a b N Ponomarenko K Egiazarian V Lukin and J Astola Additional Lossless Compression of JPEG Images Proc of the 4th Intl Symposium on Image and Signal Processing and Analysis ISPA 2005 Zagreb Croatia pp 117 120 September 15 17 2005 a b c d M Stirner and G Seelmann Improved Redundancy Reduction for JPEG Files Proc of Picture Coding Symposium PCS 2007 Lisbon Portugal November 7 9 2007 a b c Ichiro Matsuda Yukio Nomoto Kei Wakabayashi and Susumu Itoh Lossless Re encoding of JPEG images using block adaptive intra prediction Proceedings of the 16th European Signal Processing Conference EUSIPCO 2008 Stirner Matthias 19 February 2023 packjpg packJPG J Siragusa D C Swift 1997 General Purpose Stereoscopic Data Descriptor PDF VRex Inc Elmsford New York US Archived from the original PDF on 2011 10 30 a href Template Cite web html title Template Cite web cite web a CS1 maint uses authors parameter link Tim Kemp JPS files Multi Picture Format PDF 2009 Archived from the original PDF on 2016 04 05 Retrieved 2015 12 30 MPO2Stereo Convert Fujifilm MPO files to JPEG stereo pairs Mtbs3d com retrieved 12 January 2010 Alessandro Ortis Sebastiano Battiato 2015 Sitnik Robert Puech William eds A new fast matching method for adaptive compression of stereoscopic images Three Dimensional Image Processing Three Dimensional Image Processing Measurement 3DIPM and Applications 2015 SPIE Three Dimensional Image Processing Measurement 3DIPM and Applications 2015 9393 93930K Bibcode 2015SPIE 9393E 0KO doi 10 1117 12 2086372 S2CID 18879942 retrieved 30 April 2015 Alessandro Ortis Francesco Rundo Giuseppe Di Giore Sebastiano Battiato Adaptive Compression of Stereoscopic Images International Conference on Image Analysis and Processing ICIAP 2013 retrieved 30 April 2015 Overview of JPEG jpeg org Retrieved 2017 10 16 Tom Lane January 16 2013 jpeg 9 API ABI compatibility and the future role of this project Software That Uses or Provides libjpeg turbo February 9 2012 Issue 48789 chromium Use libjpeg turbo instead of libjpeg April 14 2011 ISO IEC 10918 7 2019 Information technology Digital compression and coding of continuous tone still images Part 7 Reference software ISO T 873 05 19 Information technology Digital compression and coding of continuous tone still images Reference software www itu int JPEG JPEG XT jpeg org Introducing the mozjpeg Project Mozilla Research Richter Thomas September 2016 JPEG on STEROIDS Common optimization techniques for JPEG image compression 2016 IEEE International Conference on Image Processing ICIP 61 65 doi 10 1109 ICIP 2016 7532319 ISBN 978 1 4673 9961 6 S2CID 14922251 Announcing Guetzli A New Open Source JPEG Encoder Research googleblog com Retrieved 16 October 2017 JPEG JPEG XT jpeg org Alakuijala Jyrki van Asseldonk Ruud Boukortt Sami Bruse Martin Comșa Iulia Maria Firsching Moritz Fischbacher Thomas Kliuchnikov Evgenii Gomez Sebastian Obryk Robert Potempa Krzysztof Rhatushnyak Alexander Sneyers Jon Szabadka Zoltan Vandervenne Lode Versari Luca Wassenberg Jan 2019 09 06 JPEG XL next generation image compression architecture and coding tools In Tescher Andrew G Ebrahimi Touradj eds Applications of Digital Image Processing XLII p 20 doi 10 1117 12 2529237 ISBN 9781510629677 S2CID 202785129 Rhatushnyak Alexander Wassenberg Jan Sneyers Jon Alakuijala Jyrki Vandevenne Lode Versari Luca Obryk Robert Szabadka Zoltan Kliuchnikov Evgenii Comsa Iulia Maria Potempa Krzysztof Bruse Martin Firsching Moritz Khasanova Renata Ruud van Asseldonk Boukortt Sami Gomez Sebastian Fischbacher Thomas 2019 Committee Draft of JPEG XL Image Coding System arXiv 1908 03565 eess IV N79010 Final Call for Proposals for a Next Generation Image Coding Standard JPEG XL PDF ISO IEC JTC 1 SC 29 WG 1 ITU T SG16 Retrieved 29 May 2018 ISO IEC 18181 1 2022 Information technology JPEG XL image coding system Part 1 Core coding system ISO IEC 18181 2 2021 Information technology JPEG XL image coding system Part 2 File format External links Edit Wikimedia Commons has media related to JPEG compression Official website JPEG Standard JPEG ISO IEC 10918 1 ITU T Recommendation T 81 at W3 org JFIF File Format at W3 org Example images over the full range of quantization levels from 1 to 100 at visengi com JPEG decoder open source code copyright C 1995 1997 Thomas G Lane Retrieved from https en wikipedia org w index php title JPEG amp oldid 1145668379, wikipedia, wiki, book, books, library,

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