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Signal processing

Signal processing is an electrical engineering subfield that focuses on analyzing, modifying and synthesizing signals, such as sound, images, potential fields, seismic signals, altimetry processing, and scientific measurements.[1] Signal processing techniques are used to optimize transmissions, digital storage efficiency, correcting distorted signals, subjective video quality and to also detect or pinpoint components of interest in a measured signal.[2]

Signal transmission using electronic signal processing. Transducers convert signals from other physical waveforms to electric current or voltage waveforms, which then are processed, transmitted as electromagnetic waves, received and converted by another transducer to final form.
The signal on the left looks like noise, but the signal processing technique known as spectral density estimation shows (right) that it contains five well-defined frequency components.

History

According to Alan V. Oppenheim and Ronald W. Schafer, the principles of signal processing can be found in the classical numerical analysis techniques of the 17th century. They further state that the digital refinement of these techniques can be found in the digital control systems of the 1940s and 1950s.[3]

In 1948, Claude Shannon wrote the influential paper "A Mathematical Theory of Communication" which was published in the Bell System Technical Journal.[4] The paper laid the groundwork for later development of information communication systems and the processing of signals for transmission.[5]

Signal processing matured and flourished in the 1960s and 1970s, and digital signal processing became widely used with specialized digital signal processor chips in the 1980s.[5]

Categories

Analog

Analog signal processing is for signals that have not been digitized, as in most 20th-century radio, telephone, and television systems. This involves linear electronic circuits as well as nonlinear ones. The former are, for instance, passive filters, active filters, additive mixers, integrators, and delay lines. Nonlinear circuits include compandors, multipliers (frequency mixers, voltage-controlled amplifiers), voltage-controlled filters, voltage-controlled oscillators, and phase-locked loops.

Continuous time

Continuous-time signal processing is for signals that vary with the change of continuous domain (without considering some individual interrupted points).

The methods of signal processing include time domain, frequency domain, and complex frequency domain. This technology mainly discusses the modeling of a linear time-invariant continuous system, integral of the system's zero-state response, setting up system function and the continuous time filtering of deterministic signals

Discrete time

Discrete-time signal processing is for sampled signals, defined only at discrete points in time, and as such are quantized in time, but not in magnitude.

Analog discrete-time signal processing is a technology based on electronic devices such as sample and hold circuits, analog time-division multiplexers, analog delay lines and analog feedback shift registers. This technology was a predecessor of digital signal processing (see below), and is still used in advanced processing of gigahertz signals.

The concept of discrete-time signal processing also refers to a theoretical discipline that establishes a mathematical basis for digital signal processing, without taking quantization error into consideration.

Digital

Digital signal processing is the processing of digitized discrete-time sampled signals. Processing is done by general-purpose computers or by digital circuits such as ASICs, field-programmable gate arrays or specialized digital signal processors (DSP chips). Typical arithmetical operations include fixed-point and floating-point, real-valued and complex-valued, multiplication and addition. Other typical operations supported by the hardware are circular buffers and lookup tables. Examples of algorithms are the fast Fourier transform (FFT), finite impulse response (FIR) filter, Infinite impulse response (IIR) filter, and adaptive filters such as the Wiener and Kalman filters.

Nonlinear

Nonlinear signal processing involves the analysis and processing of signals produced from nonlinear systems and can be in the time, frequency, or spatiotemporal domains.[6][7] Nonlinear systems can produce highly complex behaviors including bifurcations, chaos, harmonics, and subharmonics which cannot be produced or analyzed using linear methods.

Polynomial signal processing is a type of non-linear signal processing, where polynomial systems may be interpreted as conceptually straightforward extensions of linear systems to the non-linear case.[8]

Statistical

Statistical signal processing is an approach which treats signals as stochastic processes, utilizing their statistical properties to perform signal processing tasks.[9] Statistical techniques are widely used in signal processing applications. For example, one can model the probability distribution of noise incurred when photographing an image, and construct techniques based on this model to reduce the noise in the resulting image.

Application fields

 
Seismic signal processing

In communication systems, signal processing may occur at:

Typical devices

Mathematical methods applied

See also

References

  1. ^ Sengupta, Nandini; Sahidullah, Md; Saha, Goutam (August 2016). "Lung sound classification using cepstral-based statistical features". Computers in Biology and Medicine. 75 (1): 118–129. doi:10.1016/j.compbiomed.2016.05.013. PMID 27286184.
  2. ^ Alan V. Oppenheim and Ronald W. Schafer (1989). Discrete-Time Signal Processing. Prentice Hall. p. 1. ISBN 0-13-216771-9.
  3. ^ Oppenheim, Alan V.; Schafer, Ronald W. (1975). Digital Signal Processing. Prentice Hall. p. 5. ISBN 0-13-214635-5.
  4. ^ "A Mathematical Theory of Communication – CHM Revolution". Computer History. Retrieved 2019-05-13.
  5. ^ a b Fifty Years of Signal Processing: The IEEE Signal Processing Society and its Technologies, 1948–1998 (PDF). The IEEE Signal Processing Society. 1998.
  6. ^ a b Billings, S. A. (2013). Nonlinear System Identification: NARMAX Methods in the Time, Frequency, and Spatio-Temporal Domains. Wiley. ISBN 978-1119943594.
  7. ^ Slawinska, J., Ourmazd, A., and Giannakis, D. (2018). "A New Approach to Signal Processing of Spatiotemporal Data". 2018 IEEE Statistical Signal Processing Workshop (SSP). IEEE Xplore. pp. 338–342. doi:10.1109/SSP.2018.8450704. ISBN 978-1-5386-1571-3. S2CID 52153144.{{cite book}}: CS1 maint: uses authors parameter (link)
  8. ^ V. John Mathews; Giovanni L. Sicuranza (May 2000). Polynomial Signal Processing. Wiley. ISBN 978-0-471-03414-8.
  9. ^ a b Scharf, Louis L. (1991). Statistical signal processing: detection, estimation, and time series analysis. Boston: Addison–Wesley. ISBN 0-201-19038-9. OCLC 61160161.
  10. ^ Sarangi, Susanta; Sahidullah, Md; Saha, Goutam (September 2020). "Optimization of data-driven filterbank for automatic speaker verification". Digital Signal Processing. 104: 102795. arXiv:2007.10729. doi:10.1016/j.dsp.2020.102795. S2CID 220665533.
  11. ^ Anastassiou, D. (2001). "Genomic signal processing". IEEE Signal Processing Magazine. IEEE. 18 (4): 8–20. Bibcode:2001ISPM...18....8A. doi:10.1109/79.939833.
  12. ^ Telford, William Murray; Geldart, L. P.; Sheriff, Robert E. (1990). Applied geophysics. Cambridge University Press. ISBN 978-0-521-33938-4.
  13. ^ Reynolds, John M. (2011). An Introduction to Applied and Environmental Geophysics. Wiley-Blackwell. ISBN 978-0-471-48535-3.
  14. ^ Patrick Gaydecki (2004). Foundations of Digital Signal Processing: Theory, Algorithms and Hardware Design. IET. pp. 40–. ISBN 978-0-85296-431-6.
  15. ^ Shlomo Engelberg (8 January 2008). Digital Signal Processing: An Experimental Approach. Springer Science & Business Media. ISBN 978-1-84800-119-0.
  16. ^ Boashash, Boualem, ed. (2003). Time frequency signal analysis and processing a comprehensive reference (1 ed.). Amsterdam: Elsevier. ISBN 0-08-044335-4.
  17. ^ Stoica, Petre; Moses, Randolph (2005). Spectral Analysis of Signals (PDF). NJ: Prentice Hall.
  18. ^ Peter J. Schreier; Louis L. Scharf (4 February 2010). Statistical Signal Processing of Complex-Valued Data: The Theory of Improper and Noncircular Signals. Cambridge University Press. ISBN 978-1-139-48762-7.
  19. ^ Max A. Little (13 August 2019). Machine Learning for Signal Processing: Data Science, Algorithms, and Computational Statistics. OUP Oxford. ISBN 978-0-19-102431-3.
  20. ^ Steven B. Damelin; Willard Miller, Jr (2012). The Mathematics of Signal Processing. Cambridge University Press. ISBN 978-1-107-01322-3.
  21. ^ Daniel P. Palomar; Yonina C. Eldar (2010). Convex Optimization in Signal Processing and Communications. Cambridge University Press. ISBN 978-0-521-76222-9.

Further reading

External links

  • Signal Processing for Communications – free online textbook by Paolo Prandoni and Martin Vetterli (2008)
  • Scientists and Engineers Guide to Digital Signal Processing – free online textbook by Stephen Smith

signal, processing, signal, theory, redirects, here, confused, with, signalling, theory, signalling, economics, this, article, multiple, issues, please, help, improve, discuss, these, issues, talk, page, learn, when, remove, these, template, messages, this, ar. Signal theory redirects here Not to be confused with Signalling theory or Signalling economics This article has multiple issues Please help improve it or discuss these issues on the talk page Learn how and when to remove these template messages This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations January 2017 Learn how and when to remove this template message This article is in list format but may read better as prose You can help by converting this article if appropriate Editing help is available June 2017 Learn how and when to remove this template message Signal processing is an electrical engineering subfield that focuses on analyzing modifying and synthesizing signals such as sound images potential fields seismic signals altimetry processing and scientific measurements 1 Signal processing techniques are used to optimize transmissions digital storage efficiency correcting distorted signals subjective video quality and to also detect or pinpoint components of interest in a measured signal 2 Signal transmission using electronic signal processing Transducers convert signals from other physical waveforms to electric current or voltage waveforms which then are processed transmitted as electromagnetic waves received and converted by another transducer to final form The signal on the left looks like noise but the signal processing technique known as spectral density estimation shows right that it contains five well defined frequency components Contents 1 History 2 Categories 2 1 Analog 2 2 Continuous time 2 3 Discrete time 2 4 Digital 2 5 Nonlinear 2 6 Statistical 3 Application fields 4 Typical devices 5 Mathematical methods applied 6 See also 7 References 8 Further reading 9 External linksHistory EditAccording to Alan V Oppenheim and Ronald W Schafer the principles of signal processing can be found in the classical numerical analysis techniques of the 17th century They further state that the digital refinement of these techniques can be found in the digital control systems of the 1940s and 1950s 3 In 1948 Claude Shannon wrote the influential paper A Mathematical Theory of Communication which was published in the Bell System Technical Journal 4 The paper laid the groundwork for later development of information communication systems and the processing of signals for transmission 5 Signal processing matured and flourished in the 1960s and 1970s and digital signal processing became widely used with specialized digital signal processor chips in the 1980s 5 Categories EditAnalog Edit Main article Analog signal processing Analog signal processing is for signals that have not been digitized as in most 20th century radio telephone and television systems This involves linear electronic circuits as well as nonlinear ones The former are for instance passive filters active filters additive mixers integrators and delay lines Nonlinear circuits include compandors multipliers frequency mixers voltage controlled amplifiers voltage controlled filters voltage controlled oscillators and phase locked loops Continuous time Edit Continuous time signal processing is for signals that vary with the change of continuous domain without considering some individual interrupted points The methods of signal processing include time domain frequency domain and complex frequency domain This technology mainly discusses the modeling of a linear time invariant continuous system integral of the system s zero state response setting up system function and the continuous time filtering of deterministic signals Discrete time Edit Discrete time signal processing is for sampled signals defined only at discrete points in time and as such are quantized in time but not in magnitude Analog discrete time signal processing is a technology based on electronic devices such as sample and hold circuits analog time division multiplexers analog delay lines and analog feedback shift registers This technology was a predecessor of digital signal processing see below and is still used in advanced processing of gigahertz signals The concept of discrete time signal processing also refers to a theoretical discipline that establishes a mathematical basis for digital signal processing without taking quantization error into consideration Digital Edit Main article Digital signal processing Digital signal processing is the processing of digitized discrete time sampled signals Processing is done by general purpose computers or by digital circuits such as ASICs field programmable gate arrays or specialized digital signal processors DSP chips Typical arithmetical operations include fixed point and floating point real valued and complex valued multiplication and addition Other typical operations supported by the hardware are circular buffers and lookup tables Examples of algorithms are the fast Fourier transform FFT finite impulse response FIR filter Infinite impulse response IIR filter and adaptive filters such as the Wiener and Kalman filters Nonlinear Edit Nonlinear signal processing involves the analysis and processing of signals produced from nonlinear systems and can be in the time frequency or spatiotemporal domains 6 7 Nonlinear systems can produce highly complex behaviors including bifurcations chaos harmonics and subharmonics which cannot be produced or analyzed using linear methods Polynomial signal processing is a type of non linear signal processing where polynomial systems may be interpreted as conceptually straightforward extensions of linear systems to the non linear case 8 Statistical Edit Statistical signal processing is an approach which treats signals as stochastic processes utilizing their statistical properties to perform signal processing tasks 9 Statistical techniques are widely used in signal processing applications For example one can model the probability distribution of noise incurred when photographing an image and construct techniques based on this model to reduce the noise in the resulting image Application fields Edit Seismic signal processing Audio signal processing for electrical signals representing sound such as speech or music 10 Image processing in digital cameras computers and various imaging systems Video processing for interpreting moving pictures Wireless communication waveform generations demodulation filtering equalization Control systems Array processing for processing signals from arrays of sensors Process control a variety of signals are used including the industry standard 4 20 mA current loop Seismology Financial signal processing analyzing financial data using signal processing techniques especially for prediction purposes Feature extraction such as image understanding and speech recognition Quality improvement such as noise reduction image enhancement and echo cancellation Source coding including audio compression image compression and video compression Genomic signal processing 11 In geophysics signal processing is used to amplify the signal vs the noise within time series measurements of geophysical data Processing is conducted within either the time domain or frequency domain or both 12 13 In communication systems signal processing may occur at OSI layer 1 in the seven layer OSI model the physical layer modulation equalization multiplexing etc OSI layer 2 the data link layer forward error correction OSI layer 6 the presentation layer source coding including analog to digital conversion and data compression Typical devices EditFilters for example analog passive or active or digital FIR IIR frequency domain or stochastic filters etc Samplers and analog to digital converters for signal acquisition and reconstruction which involves measuring a physical signal storing or transferring it as digital signal and possibly later rebuilding the original signal or an approximation thereof Signal compressors Digital signal processors DSPs Mathematical methods applied EditDifferential equations 14 Recurrence relations 15 Transform theory Time frequency analysis for processing non stationary signals 16 Spectral estimation for determining the spectral content i e the distribution of power over frequency of a time series 17 Statistical signal processing analyzing and extracting information from signals and noise based on their stochastic properties Linear time invariant system theory and transform theory Polynomial signal processing analysis of systems which relate input and output using polynomials System identification 6 and classification Calculus Complex analysis 18 Vector spaces and Linear algebra 19 Functional analysis 20 Probability and stochastic processes 9 Detection theory Estimation theory Optimization 21 Numerical methods Time series Data mining for statistical analysis of relations between large quantities of variables in this context representing many physical signals to extract previously unknown interesting patternsSee also EditAlgebraic signal processing Audio filter Bounded variation Digital image processing Dynamic range compression companding limiting and noise gating Fourier transform Information theory Least squares spectral analysis Non local means Reverberation Sensitivity electronics References Edit Sengupta Nandini Sahidullah Md Saha Goutam August 2016 Lung sound classification using cepstral based statistical features Computers in Biology and Medicine 75 1 118 129 doi 10 1016 j compbiomed 2016 05 013 PMID 27286184 Alan V Oppenheim and Ronald W Schafer 1989 Discrete Time Signal Processing Prentice Hall p 1 ISBN 0 13 216771 9 Oppenheim Alan V Schafer Ronald W 1975 Digital Signal Processing Prentice Hall p 5 ISBN 0 13 214635 5 A Mathematical Theory of Communication CHM Revolution Computer History Retrieved 2019 05 13 a b Fifty Years of Signal Processing The IEEE Signal Processing Society and its Technologies 1948 1998 PDF The IEEE Signal Processing Society 1998 a b Billings S A 2013 Nonlinear System Identification NARMAX Methods in the Time Frequency and Spatio Temporal Domains Wiley ISBN 978 1119943594 Slawinska J Ourmazd A and Giannakis D 2018 A New Approach to Signal Processing of Spatiotemporal Data 2018 IEEE Statistical Signal Processing Workshop SSP IEEE Xplore pp 338 342 doi 10 1109 SSP 2018 8450704 ISBN 978 1 5386 1571 3 S2CID 52153144 a href Template Cite book html title Template Cite book cite book a CS1 maint uses authors parameter link V John Mathews Giovanni L Sicuranza May 2000 Polynomial Signal Processing Wiley ISBN 978 0 471 03414 8 a b Scharf Louis L 1991 Statistical signal processing detection estimation and time series analysis Boston Addison Wesley ISBN 0 201 19038 9 OCLC 61160161 Sarangi Susanta Sahidullah Md Saha Goutam September 2020 Optimization of data driven filterbank for automatic speaker verification Digital Signal Processing 104 102795 arXiv 2007 10729 doi 10 1016 j dsp 2020 102795 S2CID 220665533 Anastassiou D 2001 Genomic signal processing IEEE Signal Processing Magazine IEEE 18 4 8 20 Bibcode 2001ISPM 18 8A doi 10 1109 79 939833 Telford William Murray Geldart L P Sheriff Robert E 1990 Applied geophysics Cambridge University Press ISBN 978 0 521 33938 4 Reynolds John M 2011 An Introduction to Applied and Environmental Geophysics Wiley Blackwell ISBN 978 0 471 48535 3 Patrick Gaydecki 2004 Foundations of Digital Signal Processing Theory Algorithms and Hardware Design IET pp 40 ISBN 978 0 85296 431 6 Shlomo Engelberg 8 January 2008 Digital Signal Processing An Experimental Approach Springer Science amp Business Media ISBN 978 1 84800 119 0 Boashash Boualem ed 2003 Time frequency signal analysis and processing a comprehensive reference 1 ed Amsterdam Elsevier ISBN 0 08 044335 4 Stoica Petre Moses Randolph 2005 Spectral Analysis of Signals PDF NJ Prentice Hall Peter J Schreier Louis L Scharf 4 February 2010 Statistical Signal Processing of Complex Valued Data The Theory of Improper and Noncircular Signals Cambridge University Press ISBN 978 1 139 48762 7 Max A Little 13 August 2019 Machine Learning for Signal Processing Data Science Algorithms and Computational Statistics OUP Oxford ISBN 978 0 19 102431 3 Steven B Damelin Willard Miller Jr 2012 The Mathematics of Signal Processing Cambridge University Press ISBN 978 1 107 01322 3 Daniel P Palomar Yonina C Eldar 2010 Convex Optimization in Signal Processing and Communications Cambridge University Press ISBN 978 0 521 76222 9 Further reading EditP Stoica R Moses 2005 Spectral Analysis of Signals PDF NJ Prentice Hall Kay Steven M 1993 Fundamentals of Statistical Signal Processing Upper Saddle River New Jersey Prentice Hall ISBN 0 13 345711 7 OCLC 26504848 Papoulis Athanasios 1991 Probability Random Variables and Stochastic Processes third ed McGraw Hill ISBN 0 07 100870 5 Kainam Thomas Wong 1 Statistical Signal Processing lecture notes at the University of Waterloo Canada Ali H Sayed Adaptive Filters Wiley NJ 2008 ISBN 978 0 470 25388 5 Thomas Kailath Ali H Sayed and Babak Hassibi Linear Estimation Prentice Hall NJ 2000 ISBN 978 0 13 022464 4 External links EditSignal Processing for Communications free online textbook by Paolo Prandoni and Martin Vetterli 2008 Scientists and Engineers Guide to Digital Signal Processing free online textbook by Stephen Smith Retrieved from https en wikipedia org w index php title Signal processing amp oldid 1158522515, wikipedia, wiki, book, books, library,

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