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Signal-to-noise ratio

Signal-to-noise ratio (SNR or S/N) is a measure used in science and engineering that compares the level of a desired signal to the level of background noise. SNR is defined as the ratio of signal power to the noise power, often expressed in decibels. A ratio higher than 1:1 (greater than 0 dB) indicates more signal than noise.

SNR, bandwidth, and channel capacity of a communication channel are connected by the Shannon–Hartley theorem.

Definition

Signal-to-noise ratio is defined as the ratio of the power of a signal (meaningful input) to the power of background noise (meaningless or unwanted input):

 

where P is average power. Both signal and noise power must be measured at the same or equivalent points in a system, and within the same system bandwidth.

Depending on whether the signal is a constant (s) or a random variable (S), the signal-to-noise ratio for random noise N becomes:[1]

 

where E refers to the expected value, i.e. in this case the mean square of N, or

 

If the noise has expected value of zero, as is common, the denominator is its variance, the square of its standard deviation σN.


The signal and the noise must be measured the same way, for example as voltages across the same impedance. The root mean squares can alternatively be used in the ratio:

 

where A is root mean square (RMS) amplitude (for example, RMS voltage).

Decibels

Because many signals have a very wide dynamic range, signals are often expressed using the logarithmic decibel scale. Based upon the definition of decibel, signal and noise may be expressed in decibels (dB) as

 

and

 

In a similar manner, SNR may be expressed in decibels as

 

Using the definition of SNR

 

Using the quotient rule for logarithms

 

Substituting the definitions of SNR, signal, and noise in decibels into the above equation results in an important formula for calculating the signal to noise ratio in decibels, when the signal and noise are also in decibels:

 

In the above formula, P is measured in units of power, such as watts (W) or milliwatts (mW), and the signal-to-noise ratio is a pure number.

However, when the signal and noise are measured in volts (V) or amperes (A), which are measures of amplitude,[note 1] they must first be squared to obtain a quantity proportional to power, as shown below:

 

Dynamic range

The concepts of signal-to-noise ratio and dynamic range are closely related. Dynamic range measures the ratio between the strongest un-distorted signal on a channel and the minimum discernible signal, which for most purposes is the noise level. SNR measures the ratio between an arbitrary signal level (not necessarily the most powerful signal possible) and noise. Measuring signal-to-noise ratios requires the selection of a representative or reference signal. In audio engineering, the reference signal is usually a sine wave at a standardized nominal or alignment level, such as 1 kHz at +4 dBu (1.228 VRMS).

SNR is usually taken to indicate an average signal-to-noise ratio, as it is possible that instantaneous signal-to-noise ratios will be considerably different. The concept can be understood as normalizing the noise level to 1 (0 dB) and measuring how far the signal 'stands out'.

Difference from conventional power

In physics, the average power of an AC signal is defined as the average value of voltage times current; for resistive (non-reactive) circuits, where voltage and current are in phase, this is equivalent to the product of the rms voltage and current:

 
 

But in signal processing and communication, one usually assumes that   [3] so that factor is usually not included while measuring power or energy of a signal. This may cause some confusion among readers, but the resistance factor is not significant for typical operations performed in signal processing, or for computing power ratios. For most cases, the power of a signal would be considered to be simply

 

Alternative definition

An alternative definition of SNR is as the reciprocal of the coefficient of variation, i.e., the ratio of mean to standard deviation of a signal or measurement:[4][5]

 

where   is the signal mean or expected value and   is the standard deviation of the noise, or an estimate thereof.[note 2] Notice that such an alternative definition is only useful for variables that are always non-negative (such as photon counts and luminance), and it is only an approximation since  . It is commonly used in image processing,[6][7][8][9] where the SNR of an image is usually calculated as the ratio of the mean pixel value to the standard deviation of the pixel values over a given neighborhood.

Sometimes[further explanation needed] SNR is defined as the square of the alternative definition above, in which case it is equivalent to the more common definition:

 

This definition is closely related to the sensitivity index or d', when assuming that the signal has two states separated by signal amplitude  , and the noise standard deviation   does not change between the two states.

The Rose criterion (named after Albert Rose) states that an SNR of at least 5 is needed to be able to distinguish image features with certainty. An SNR less than 5 means less than 100% certainty in identifying image details.[5][10]

Yet another alternative, very specific, and distinct definition of SNR is employed to characterize sensitivity of imaging systems; see Signal-to-noise ratio (imaging).

Related measures are the "contrast ratio" and the "contrast-to-noise ratio".

Modulation system measurements

Amplitude modulation

Channel signal-to-noise ratio is given by

 

where W is the bandwidth and   is modulation index

Output signal-to-noise ratio (of AM receiver) is given by

 

Frequency modulation

Channel signal-to-noise ratio is given by

 

Output signal-to-noise ratio is given by

 

Noise reduction

 
Recording from a thermogravimetric analysis device with poor mechanical isolation; the middle of the plot shows lower noise due to reduced human activity at night.

All real measurements are disturbed by noise. This includes electronic noise, but can also include external events that affect the measured phenomenon — wind, vibrations, the gravitational attraction of the moon, variations of temperature, variations of humidity, etc., depending on what is measured and of the sensitivity of the device. It is often possible to reduce the noise by controlling the environment.

Internal electronic noise of measurement systems can be reduced through the use of low-noise amplifiers.

When the characteristics of the noise are known and are different from the signal, it is possible to use a filter to reduce the noise. For example, a lock-in amplifier can extract a narrow bandwidth signal from broadband noise a million times stronger.

When the signal is constant or periodic and the noise is random, it is possible to enhance the SNR by averaging the measurements. In this case the noise goes down as the square root of the number of averaged samples.

Digital signals

When a measurement is digitized, the number of bits used to represent the measurement determines the maximum possible signal-to-noise ratio. This is because the minimum possible noise level is the error caused by the quantization of the signal, sometimes called quantization noise. This noise level is non-linear and signal-dependent; different calculations exist for different signal models. Quantization noise is modeled as an analog error signal summed with the signal before quantization ("additive noise").

This theoretical maximum SNR assumes a perfect input signal. If the input signal is already noisy (as is usually the case), the signal's noise may be larger than the quantization noise. Real analog-to-digital converters also have other sources of noise that further decrease the SNR compared to the theoretical maximum from the idealized quantization noise, including the intentional addition of dither.

Although noise levels in a digital system can be expressed using SNR, it is more common to use Eb/No, the energy per bit per noise power spectral density.

The modulation error ratio (MER) is a measure of the SNR in a digitally modulated signal.

Fixed point

For n-bit integers with equal distance between quantization levels (uniform quantization) the dynamic range (DR) is also determined.

Assuming a uniform distribution of input signal values, the quantization noise is a uniformly distributed random signal with a peak-to-peak amplitude of one quantization level, making the amplitude ratio 2n/1. The formula is then:

 

This relationship is the origin of statements like "16-bit audio has a dynamic range of 96 dB". Each extra quantization bit increases the dynamic range by roughly 6 dB.

Assuming a full-scale sine wave signal (that is, the quantizer is designed such that it has the same minimum and maximum values as the input signal), the quantization noise approximates a sawtooth wave with peak-to-peak amplitude of one quantization level[11] and uniform distribution. In this case, the SNR is approximately

 

Floating point

Floating-point numbers provide a way to trade off signal-to-noise ratio for an increase in dynamic range. For n bit floating-point numbers, with n-m bits in the mantissa and m bits in the exponent:

 
 

Note that the dynamic range is much larger than fixed-point, but at a cost of a worse signal-to-noise ratio. This makes floating-point preferable in situations where the dynamic range is large or unpredictable. Fixed-point's simpler implementations can be used with no signal quality disadvantage in systems where dynamic range is less than 6.02m. The very large dynamic range of floating-point can be a disadvantage, since it requires more forethought in designing algorithms.[12][note 3][note 4]

Optical signals

Optical signals have a carrier frequency (about 200 THz and more) that is much higher than the modulation frequency. This way the noise covers a bandwidth that is much wider than the signal itself. The resulting signal influence relies mainly on the filtering of the noise. To describe the signal quality without taking the receiver into account, the optical SNR (OSNR) is used. The OSNR is the ratio between the signal power and the noise power in a given bandwidth. Most commonly a reference bandwidth of 0.1 nm is used. This bandwidth is independent of the modulation format, the frequency and the receiver. For instance an OSNR of 20 dB/0.1 nm could be given, even the signal of 40 GBit DPSK would not fit in this bandwidth. OSNR is measured with an optical spectrum analyzer.

Types and abbreviations

Signal to noise ratio may be abbreviated as SNR and less commonly as S/N. PSNR stands for peak signal-to-noise ratio. GSNR stands for geometric signal-to-noise ratio.[citation needed] SINR is the signal-to-interference-plus-noise ratio.

Other uses

While SNR is commonly quoted for electrical signals, it can be applied to any form of signal, for example isotope levels in an ice core, biochemical signaling between cells, or financial trading signals. The term is sometimes used metaphorically to refer to the ratio of useful information to false or irrelevant data in a conversation or exchange. For example, in online discussion forums and other online communities, off-topic posts and spam are regarded as noise that interferes with the signal of appropriate discussion.[13]

See also

Notes

  1. ^ The connection between optical power and voltage in an imaging system is linear. This usually means that the SNR of the electrical signal is calculated by the 10 log rule. With an interferometric system, however, where interest lies in the signal from one arm only, the field of the electromagnetic wave is proportional to the voltage (assuming that the intensity in the second, the reference arm is constant). Therefore the optical power of the measurement arm is directly proportional to the electrical power and electrical signals from optical interferometry are following the 20 log rule.[2]
  2. ^ The exact methods may vary between fields. For example, if the signal data are known to be constant, then   can be calculated using the standard deviation of the signal. If the signal data are not constant, then   can be calculated from data where the signal is zero or relatively constant.
  3. ^ Often special filters are used to weight the noise: DIN-A, DIN-B, DIN-C, DIN-D, CCIR-601; for video, special filters such as comb filters may be used.
  4. ^ Maximum possible full scale signal can be charged as peak-to-peak or as RMS. Audio uses RMS, Video P-P, which gave +9 dB more SNR for video.

References

  1. ^ Charles Sherman and John Butler (2007). Transducers and Arrays for Underwater Sound. Springer Science & Business Media. p. 276. ISBN 9780387331393.{{cite book}}: CS1 maint: uses authors parameter (link)
  2. ^ Michael A. Choma, Marinko V. Sarunic, Changhuei Yang, Joseph A. Izatt. Sensitivity advantage of swept source and Fourier domain optical coherence tomography. Optics Express, 11(18). Sept 2003.
  3. ^ Gabriel L. A. de Sousa and George C. Cardoso (18 June 2018). "A battery-resistor analogy for further insights on measurement uncertainties". Physics Education. IOP Publishing. 53 (5): 055001. arXiv:1611.03425. Bibcode:2018PhyEd..53e5001D. doi:10.1088/1361-6552/aac84b. S2CID 125414987. Retrieved 5 May 2021.{{cite journal}}: CS1 maint: uses authors parameter (link)
  4. ^ D. J. Schroeder (1999). Astronomical optics (2nd ed.). Academic Press. p. 278. ISBN 978-0-12-629810-9., p.278
  5. ^ a b Bushberg, J. T., et al., The Essential Physics of Medical Imaging, (2e). Philadelphia: Lippincott Williams & Wilkins, 2006, p. 280.
  6. ^ Rafael C. González, Richard Eugene Woods (2008). Digital image processing. Prentice Hall. p. 354. ISBN 978-0-13-168728-8.
  7. ^ Tania Stathaki (2008). Image fusion: algorithms and applications. Academic Press. p. 471. ISBN 978-0-12-372529-5.
  8. ^ Jitendra R. Raol (2009). Multi-Sensor Data Fusion: Theory and Practice. CRC Press. ISBN 978-1-4398-0003-4.
  9. ^ John C. Russ (2007). The image processing handbook. CRC Press. ISBN 978-0-8493-7254-4.
  10. ^ Rose, Albert (1973). Vision – Human and Electronic. Plenum Press. p. 10. ISBN 9780306307324. [...] to reduce the number of false alarms to below unity, we will need [...] a signal whose amplitude is 4–5 times larger than the rms noise.
  11. ^ Defining and Testing Dynamic Parameters in High-Speed ADCs — Maxim Integrated Products Application note 728
  12. ^ Rane Corporation technical library
  13. ^ Breeding, Andy (2004). The Music Internet Untangled: Using Online Services to Expand Your Musical Horizons. Giant Path. p. 128. ISBN 9781932340020.

External links

  • Walt Kester, Taking the Mystery out of the Infamous Formula,"SNR = 6.02N + 1.76dB," and Why You Should Care (PDF), Analog Devices, archived (PDF) from the original on 2022-10-09, retrieved 2019-04-10
  • ADC and DAC Glossary – Maxim Integrated Products
  • Understand SINAD, ENOB, SNR, THD, THD + N, and SFDR so you don't get lost in the noise floor – Analog Devices
  • Calculation of signal-to-noise ratio, noise voltage, and noise level
  • Learning by simulations – a simulation showing the improvement of the SNR by time averaging
  • Dynamic Performance Testing of Digital Audio D/A Converters
  • Fundamental theorem of analog circuits: a minimum level of power must be dissipated to maintain a level of SNR
  • Interactive webdemo of visualization of SNR in a QAM constellation diagram Institute of Telecommunicatons, University of Stuttgart
  • Bernard Widrow,István Kollár (2008-07-03), Quantization Noise: Roundoff Error in Digital Computation, Signal Processing, Control, and Communications, Cambridge University Press, Cambridge, UK, 2008. 778 p., ISBN 9780521886710
  • Quantization Noise Widrow & Kollár Quantization book page with sample chapters and additional material
  • Signal-to-noise ratio online audio demonstrator - Virtual Communications Lab

signal, noise, ratio, signal, noise, redirects, here, statistics, effect, size, other, uses, signal, noise, disambiguation, this, article, lead, section, short, adequately, summarize, points, please, consider, expanding, lead, provide, accessible, overview, im. Signal to noise redirects here For statistics see Effect size For other uses see Signal to noise disambiguation This article s lead section may be too short to adequately summarize the key points Please consider expanding the lead to provide an accessible overview of all important aspects of the article March 2021 Signal to noise ratio SNR or S N is a measure used in science and engineering that compares the level of a desired signal to the level of background noise SNR is defined as the ratio of signal power to the noise power often expressed in decibels A ratio higher than 1 1 greater than 0 dB indicates more signal than noise SNR bandwidth and channel capacity of a communication channel are connected by the Shannon Hartley theorem Contents 1 Definition 1 1 Decibels 1 2 Dynamic range 1 3 Difference from conventional power 2 Alternative definition 3 Modulation system measurements 3 1 Amplitude modulation 3 2 Frequency modulation 4 Noise reduction 5 Digital signals 5 1 Fixed point 5 2 Floating point 6 Optical signals 7 Types and abbreviations 8 Other uses 9 See also 10 Notes 11 References 12 External linksDefinition EditThis section does not cite any sources Please help improve this section by adding citations to reliable sources Unsourced material may be challenged and removed February 2022 Learn how and when to remove this template message Signal to noise ratio is defined as the ratio of the power of a signal meaningful input to the power of background noise meaningless or unwanted input S N R P s i g n a l P n o i s e displaystyle mathrm SNR frac P mathrm signal P mathrm noise where P is average power Both signal and noise power must be measured at the same or equivalent points in a system and within the same system bandwidth Depending on whether the signal is a constant s or a random variable S the signal to noise ratio for random noise N becomes 1 S N R s 2 E N 2 displaystyle mathrm SNR frac s 2 mathrm E N 2 where E refers to the expected value i e in this case the mean square of N or S N R E S 2 E N 2 displaystyle mathrm SNR frac mathrm E S 2 mathrm E N 2 If the noise has expected value of zero as is common the denominator is its variance the square of its standard deviation sN The signal and the noise must be measured the same way for example as voltages across the same impedance The root mean squares can alternatively be used in the ratio S N R P s i g n a l P n o i s e A s i g n a l A n o i s e 2 displaystyle mathrm SNR frac P mathrm signal P mathrm noise left frac A mathrm signal A mathrm noise right 2 where A is root mean square RMS amplitude for example RMS voltage Decibels Edit Because many signals have a very wide dynamic range signals are often expressed using the logarithmic decibel scale Based upon the definition of decibel signal and noise may be expressed in decibels dB as P s i g n a l d B 10 log 10 P s i g n a l displaystyle P mathrm signal dB 10 log 10 left P mathrm signal right and P n o i s e d B 10 log 10 P n o i s e displaystyle P mathrm noise dB 10 log 10 left P mathrm noise right In a similar manner SNR may be expressed in decibels as S N R d B 10 log 10 S N R displaystyle mathrm SNR dB 10 log 10 left mathrm SNR right Using the definition of SNR S N R d B 10 log 10 P s i g n a l P n o i s e displaystyle mathrm SNR dB 10 log 10 left frac P mathrm signal P mathrm noise right Using the quotient rule for logarithms 10 log 10 P s i g n a l P n o i s e 10 log 10 P s i g n a l 10 log 10 P n o i s e displaystyle 10 log 10 left frac P mathrm signal P mathrm noise right 10 log 10 left P mathrm signal right 10 log 10 left P mathrm noise right Substituting the definitions of SNR signal and noise in decibels into the above equation results in an important formula for calculating the signal to noise ratio in decibels when the signal and noise are also in decibels S N R d B P s i g n a l d B P n o i s e d B displaystyle mathrm SNR dB P mathrm signal dB P mathrm noise dB In the above formula P is measured in units of power such as watts W or milliwatts mW and the signal to noise ratio is a pure number However when the signal and noise are measured in volts V or amperes A which are measures of amplitude note 1 they must first be squared to obtain a quantity proportional to power as shown below S N R d B 10 log 10 A s i g n a l A n o i s e 2 20 log 10 A s i g n a l A n o i s e 2 A s i g n a l d B A n o i s e d B displaystyle mathrm SNR dB 10 log 10 left left frac A mathrm signal A mathrm noise right 2 right 20 log 10 left frac A mathrm signal A mathrm noise right 2 left A mathrm signal dB A mathrm noise dB right Dynamic range Edit The concepts of signal to noise ratio and dynamic range are closely related Dynamic range measures the ratio between the strongest un distorted signal on a channel and the minimum discernible signal which for most purposes is the noise level SNR measures the ratio between an arbitrary signal level not necessarily the most powerful signal possible and noise Measuring signal to noise ratios requires the selection of a representative or reference signal In audio engineering the reference signal is usually a sine wave at a standardized nominal or alignment level such as 1 kHz at 4 dBu 1 228 VRMS SNR is usually taken to indicate an average signal to noise ratio as it is possible that instantaneous signal to noise ratios will be considerably different The concept can be understood as normalizing the noise level to 1 0 dB and measuring how far the signal stands out Difference from conventional power Edit In physics the average power of an AC signal is defined as the average value of voltage times current for resistive non reactive circuits where voltage and current are in phase this is equivalent to the product of the rms voltage and current P V r m s I r m s displaystyle mathrm P V mathrm rms I mathrm rms P V r m s 2 R I r m s 2 R displaystyle mathrm P frac V mathrm rms 2 R I mathrm rms 2 R But in signal processing and communication one usually assumes that R 1 W displaystyle R 1 Omega 3 so that factor is usually not included while measuring power or energy of a signal This may cause some confusion among readers but the resistance factor is not significant for typical operations performed in signal processing or for computing power ratios For most cases the power of a signal would be considered to be simply P V r m s 2 displaystyle mathrm P V mathrm rms 2 Alternative definition EditAn alternative definition of SNR is as the reciprocal of the coefficient of variation i e the ratio of mean to standard deviation of a signal or measurement 4 5 S N R m s displaystyle mathrm SNR frac mu sigma where m displaystyle mu is the signal mean or expected value and s displaystyle sigma is the standard deviation of the noise or an estimate thereof note 2 Notice that such an alternative definition is only useful for variables that are always non negative such as photon counts and luminance and it is only an approximation since E X 2 s 2 m 2 displaystyle operatorname E left X 2 right sigma 2 mu 2 It is commonly used in image processing 6 7 8 9 where the SNR of an image is usually calculated as the ratio of the mean pixel value to the standard deviation of the pixel values over a given neighborhood Sometimes further explanation needed SNR is defined as the square of the alternative definition above in which case it is equivalent to the more common definition S N R m 2 s 2 displaystyle mathrm SNR frac mu 2 sigma 2 This definition is closely related to the sensitivity index or d when assuming that the signal has two states separated by signal amplitude m displaystyle mu and the noise standard deviation s displaystyle sigma does not change between the two states The Rose criterion named after Albert Rose states that an SNR of at least 5 is needed to be able to distinguish image features with certainty An SNR less than 5 means less than 100 certainty in identifying image details 5 10 Yet another alternative very specific and distinct definition of SNR is employed to characterize sensitivity of imaging systems see Signal to noise ratio imaging Related measures are the contrast ratio and the contrast to noise ratio Modulation system measurements EditAmplitude modulation Edit Channel signal to noise ratio is given by S N R C A M A C 2 1 k a 2 P 2 W N 0 displaystyle mathrm SNR C AM frac A C 2 1 k a 2 P 2WN 0 where W is the bandwidth and k a displaystyle k a is modulation indexOutput signal to noise ratio of AM receiver is given by S N R O A M A c 2 k a 2 P 2 W N 0 displaystyle mathrm SNR O AM frac A c 2 k a 2 P 2WN 0 Frequency modulation Edit Channel signal to noise ratio is given by S N R C F M A c 2 2 W N 0 displaystyle mathrm SNR C FM frac A c 2 2WN 0 Output signal to noise ratio is given by S N R O F M A c 2 k f 2 P 2 N 0 W 3 displaystyle mathrm SNR O FM frac A c 2 k f 2 P 2N 0 W 3 Noise reduction Edit Recording from a thermogravimetric analysis device with poor mechanical isolation the middle of the plot shows lower noise due to reduced human activity at night All real measurements are disturbed by noise This includes electronic noise but can also include external events that affect the measured phenomenon wind vibrations the gravitational attraction of the moon variations of temperature variations of humidity etc depending on what is measured and of the sensitivity of the device It is often possible to reduce the noise by controlling the environment Internal electronic noise of measurement systems can be reduced through the use of low noise amplifiers When the characteristics of the noise are known and are different from the signal it is possible to use a filter to reduce the noise For example a lock in amplifier can extract a narrow bandwidth signal from broadband noise a million times stronger When the signal is constant or periodic and the noise is random it is possible to enhance the SNR by averaging the measurements In this case the noise goes down as the square root of the number of averaged samples Digital signals EditWhen a measurement is digitized the number of bits used to represent the measurement determines the maximum possible signal to noise ratio This is because the minimum possible noise level is the error caused by the quantization of the signal sometimes called quantization noise This noise level is non linear and signal dependent different calculations exist for different signal models Quantization noise is modeled as an analog error signal summed with the signal before quantization additive noise This theoretical maximum SNR assumes a perfect input signal If the input signal is already noisy as is usually the case the signal s noise may be larger than the quantization noise Real analog to digital converters also have other sources of noise that further decrease the SNR compared to the theoretical maximum from the idealized quantization noise including the intentional addition of dither Although noise levels in a digital system can be expressed using SNR it is more common to use Eb No the energy per bit per noise power spectral density The modulation error ratio MER is a measure of the SNR in a digitally modulated signal Fixed point Edit See also Fixed point arithmetic For n bit integers with equal distance between quantization levels uniform quantization the dynamic range DR is also determined Assuming a uniform distribution of input signal values the quantization noise is a uniformly distributed random signal with a peak to peak amplitude of one quantization level making the amplitude ratio 2n 1 The formula is then D R d B S N R d B 20 log 10 2 n 6 02 n displaystyle mathrm DR dB mathrm SNR dB 20 log 10 2 n approx 6 02 cdot n This relationship is the origin of statements like 16 bit audio has a dynamic range of 96 dB Each extra quantization bit increases the dynamic range by roughly 6 dB Assuming a full scale sine wave signal that is the quantizer is designed such that it has the same minimum and maximum values as the input signal the quantization noise approximates a sawtooth wave with peak to peak amplitude of one quantization level 11 and uniform distribution In this case the SNR is approximately S N R d B 20 log 10 2 n 3 2 6 02 n 1 761 displaystyle mathrm SNR dB approx 20 log 10 2 n textstyle sqrt 3 2 approx 6 02 cdot n 1 761 Floating point Edit Floating point numbers provide a way to trade off signal to noise ratio for an increase in dynamic range For n bit floating point numbers with n m bits in the mantissa and m bits in the exponent D R d B 6 02 2 m displaystyle mathrm DR dB 6 02 cdot 2 m S N R d B 6 02 n m displaystyle mathrm SNR dB 6 02 cdot n m Note that the dynamic range is much larger than fixed point but at a cost of a worse signal to noise ratio This makes floating point preferable in situations where the dynamic range is large or unpredictable Fixed point s simpler implementations can be used with no signal quality disadvantage in systems where dynamic range is less than 6 02m The very large dynamic range of floating point can be a disadvantage since it requires more forethought in designing algorithms 12 note 3 note 4 Optical signals EditOptical signals have a carrier frequency about 200 THz and more that is much higher than the modulation frequency This way the noise covers a bandwidth that is much wider than the signal itself The resulting signal influence relies mainly on the filtering of the noise To describe the signal quality without taking the receiver into account the optical SNR OSNR is used The OSNR is the ratio between the signal power and the noise power in a given bandwidth Most commonly a reference bandwidth of 0 1 nm is used This bandwidth is independent of the modulation format the frequency and the receiver For instance an OSNR of 20 dB 0 1 nm could be given even the signal of 40 GBit DPSK would not fit in this bandwidth OSNR is measured with an optical spectrum analyzer Types and abbreviations EditSignal to noise ratio may be abbreviated as SNR and less commonly as S N PSNR stands for peak signal to noise ratio GSNR stands for geometric signal to noise ratio citation needed SINR is the signal to interference plus noise ratio Other uses EditWhile SNR is commonly quoted for electrical signals it can be applied to any form of signal for example isotope levels in an ice core biochemical signaling between cells or financial trading signals The term is sometimes used metaphorically to refer to the ratio of useful information to false or irrelevant data in a conversation or exchange For example in online discussion forums and other online communities off topic posts and spam are regarded as noise that interferes with the signal of appropriate discussion 13 See also EditAudio system measurements Generation loss Matched filter Near far problem Noise margin Omega ratio Peak signal to noise ratio Signal to noise statistic Signal to interference plus noise ratio SINAD Subjective video quality Total harmonic distortion Video qualityNotes Edit The connection between optical power and voltage in an imaging system is linear This usually means that the SNR of the electrical signal is calculated by the 10 log rule With an interferometric system however where interest lies in the signal from one arm only the field of the electromagnetic wave is proportional to the voltage assuming that the intensity in the second the reference arm is constant Therefore the optical power of the measurement arm is directly proportional to the electrical power and electrical signals from optical interferometry are following the 20 log rule 2 The exact methods may vary between fields For example if the signal data are known to be constant then s displaystyle sigma can be calculated using the standard deviation of the signal If the signal data are not constant then s displaystyle sigma can be calculated from data where the signal is zero or relatively constant Often special filters are used to weight the noise DIN A DIN B DIN C DIN D CCIR 601 for video special filters such as comb filters may be used Maximum possible full scale signal can be charged as peak to peak or as RMS Audio uses RMS Video P P which gave 9 dB more SNR for video References Edit Charles Sherman and John Butler 2007 Transducers and Arrays for Underwater Sound Springer Science amp Business Media p 276 ISBN 9780387331393 a href Template Cite book html title Template Cite book cite book a CS1 maint uses authors parameter link Michael A Choma Marinko V Sarunic Changhuei Yang Joseph A Izatt Sensitivity advantage of swept source and Fourier domain optical coherence tomography Optics Express 11 18 Sept 2003 Gabriel L A de Sousa and George C Cardoso 18 June 2018 A battery resistor analogy for further insights on measurement uncertainties Physics Education IOP Publishing 53 5 055001 arXiv 1611 03425 Bibcode 2018PhyEd 53e5001D doi 10 1088 1361 6552 aac84b S2CID 125414987 Retrieved 5 May 2021 a href Template Cite journal html title Template Cite journal cite journal a CS1 maint uses authors parameter link D J Schroeder 1999 Astronomical optics 2nd ed Academic Press p 278 ISBN 978 0 12 629810 9 p 278 a b Bushberg J T et al The Essential Physics of Medical Imaging 2e Philadelphia Lippincott Williams amp Wilkins 2006 p 280 Rafael C Gonzalez Richard Eugene Woods 2008 Digital image processing Prentice Hall p 354 ISBN 978 0 13 168728 8 Tania Stathaki 2008 Image fusion algorithms and applications Academic Press p 471 ISBN 978 0 12 372529 5 Jitendra R Raol 2009 Multi Sensor Data Fusion Theory and Practice CRC Press ISBN 978 1 4398 0003 4 John C Russ 2007 The image processing handbook CRC Press ISBN 978 0 8493 7254 4 Rose Albert 1973 Vision Human and Electronic Plenum Press p 10 ISBN 9780306307324 to reduce the number of false alarms to below unity we will need a signal whose amplitude is 4 5 times larger than the rms noise Defining and Testing Dynamic Parameters in High Speed ADCs Maxim Integrated Products Application note 728 Fixed Point vs Floating Point DSP for Superior Audio Rane Corporation technical library Breeding Andy 2004 The Music Internet Untangled Using Online Services to Expand Your Musical Horizons Giant Path p 128 ISBN 9781932340020 External links EditWalt Kester Taking the Mystery out of the Infamous Formula SNR 6 02N 1 76dB and Why You Should Care PDF Analog Devices archived PDF from the original on 2022 10 09 retrieved 2019 04 10 ADC and DAC Glossary Maxim Integrated Products Understand SINAD ENOB SNR THD THD N and SFDR so you don t get lost in the noise floor Analog Devices The Relationship of dynamic range to data word size in digital audio processing Calculation of signal to noise ratio noise voltage and noise level Learning by simulations a simulation showing the improvement of the SNR by time averaging Dynamic Performance Testing of Digital Audio D A Converters Fundamental theorem of analog circuits a minimum level of power must be dissipated to maintain a level of SNR Interactive webdemo of visualization of SNR in a QAM constellation diagram Institute of Telecommunicatons University of Stuttgart Bernard Widrow Istvan Kollar 2008 07 03 Quantization Noise Roundoff Error in Digital Computation Signal Processing Control and Communications Cambridge University Press Cambridge UK 2008 778 p ISBN 9780521886710 Quantization Noise Widrow amp Kollar Quantization book page with sample chapters and additional material Signal to noise ratio online audio demonstrator Virtual Communications Lab Retrieved from https en wikipedia org w index php title Signal to noise ratio amp oldid 1130309616, wikipedia, wiki, book, books, library,

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