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Cepstrum

In Fourier analysis, the cepstrum (/ˈkɛpstrʌm, ˈsɛp-, -strəm/; plural cepstra, adjective cepstral) is the result of computing the inverse Fourier transform (IFT) of the logarithm of the estimated signal spectrum. The method is a tool for investigating periodic structures in frequency spectra. The power cepstrum has applications in the analysis of human speech.

The term cepstrum was derived by reversing the first four letters of spectrum. Operations on cepstra are labelled quefrency analysis (or quefrency alanysis[1]), liftering, or cepstral analysis. It may be pronounced in the two ways given, the second having the advantage of avoiding confusion with kepstrum.

Steps in forming cepstrum from time history

Origin edit

The concept of the cepstrum was introduced in 1963 by B. P. Bogert, M. J. Healy, and J. W. Tukey.[1] It serves as a tool to investigate periodic structures in frequency spectra.[2] Such effects are related to noticeable echos or reflections in the signal, or to the occurrence of harmonic frequencies (partials, overtones). Mathematically it deals with the problem of deconvolution of signals in the frequency space.[3]

References to the Bogert paper, in a bibliography, are often edited incorrectly.[citation needed] The terms "quefrency", "alanysis", "cepstrum" and "saphe" were invented by the authors by rearranging the letters in frequency, analysis, spectrum, and phase. The invented terms are defined in analogy to the older terms.

General definition edit

The cepstrum is the result of following sequence of mathematical operations:

  • transformation of a signal from the time domain to the frequency domain
  • computation of the logarithm of the spectral amplitude
  • transformation to frequency domain, where the final independent variable, the quefrency, has a time scale.[1][2][3]

Types edit

The cepstrum is used in many variants. Most important are:

  • power cepstrum: The logarithm is taken from the "power spectrum"
  • complex cepstrum: The logarithm is taken from the spectrum, which is calculated via Fourier analysis

The following abbreviations are used in the formulas to explain the cepstrum:

Abbreviation Explanation
  Signal, which is a function of time
  Cepstrum
  Fourier transform: The abbreviation can stand i.e. for a continuous Fourier transform, a discrete Fourier transform (DFT) or even a z-transform, as the z-transform is a generalization of the DFT.[3]
  Inverse of the fourier transform
  Logarithm of x. The choice of the base b depends on the user. In some articles the base is not specified, others prefer base 10 or e. The choice of the base has no impact on the basic calculation rules, but sometimes base e leads to simplifications (see "complex cepstrum").
  Absolute value, or magnitude of a complex value, which is calculated from real- and imaginary part using the Pythagorean theorem.
  Absolute square
  Phase angle of a complex value

Power cepstrum edit

The "cepstrum" was originally defined as power cepstrum by the following relationship:[1][3]

 

The power cepstrum has main applications in analysis of sound and vibration signals. It is a complementary tool to spectral analysis.[2]

Sometimes it is also defined as:[2]

 

Due to this formula, the cepstrum is also sometimes called the spectrum of a spectrum. It can be shown that both formulas are consistent with each other as the frequency spectral distribution remains the same, the only difference being a scaling factor [2] which can be applied afterwards. Some articles prefer the second formula.[2][4]

Other notations are possible due to the fact that the log of the power spectrum is equal to the log of the spectrum if a scaling factor 2 is applied:[5]

 

and therefore:

 
 

which provides a relationship to the real cepstrum (see below).

Further, it shall be noted, that the final squaring operation in the formula for the power spectrum   is sometimes called unnecessary[3] and therefore sometimes omitted.[4][2]

The real cepstrum is directly related to the power cepstrum:

 

It is derived from the complex cepstrum (defined below) by discarding the phase information (contained in the imaginary part of the complex logarithm).[4] It has a focus on periodic effects in the amplitudes of the spectrum:[6]

 

Complex cepstrum edit

The complex cepstrum was defined by Oppenheim in his development of homomorphic system theory.[7][8] The formula is provided also in other literature.[2]

 

As   is complex the log-term can be also written with   as a product of magnitude and phase, and subsequently as a sum. Further simplification is obvious, if log is a natural logarithm with base e:

 
 

Therefore: The complex cepstrum can be also written as:[9]

 

The complex cepstrum retains the information about the phase. Thus it is always possible to return from the quefrency domain to the time domain by the inverse operation:[2][3]

 

where b is the base of the used logarithm.

Main application is the modification of the signal in the quefrency domain (liftering) as an analog operation to filtering in the spectral frequency domain.[2][3] An example is the suppression of echo effects by suppression of certain quefrencies.[2]

The phase cepstrum (after phase spectrum) is related to the complex cepstrum as

phase spectrum = (complex cepstrum − time reversal of complex cepstrum)2.

Related concepts edit

The independent variable of a cepstral graph is called the quefrency.[10] The quefrency is a measure of time, though not in the sense of a signal in the time domain. For example, if the sampling rate of an audio signal is 44100 Hz and there is a large peak in the cepstrum whose quefrency is 100 samples, the peak indicates the presence of a fundamental frequency that is 44100/100 = 441 Hz. This peak occurs in the cepstrum because the harmonics in the spectrum are periodic and the period corresponds to the fundamental frequency, since harmonics are integer multiples of the fundamental frequency.[11]

The kepstrum, which stands for "Kolmogorov-equation power-series time response", is similar to the cepstrum and has the same relation to it as expected value has to statistical average, i.e. cepstrum is the empirically measured quantity, while kepstrum is the theoretical quantity. It was in use before the cepstrum.[12][13]

The autocepstrum is defined as the cepstrum of the autocorrelation. The autocepstrum is more accurate than the cepstrum in the analysis of data with echoes.

Playing further on the anagram theme, a filter that operates on a cepstrum might be called a lifter. A low-pass lifter is similar to a low-pass filter in the frequency domain. It can be implemented by multiplying by a window in the quefrency domain and then converting back to the frequency domain, resulting in a modified signal, i.e. with signal echo being reduced.

Interpretation edit

The cepstrum can be seen as information about the rate of change in the different spectrum bands. It was originally invented for characterizing the seismic echoes resulting from earthquakes and bomb explosions. It has also been used to determine the fundamental frequency of human speech and to analyze radar signal returns. Cepstrum pitch determination is particularly effective because the effects of the vocal excitation (pitch) and vocal tract (formants) are additive in the logarithm of the power spectrum and thus clearly separate.[14]

The cepstrum is a representation used in homomorphic signal processing, to convert signals combined by convolution (such as a source and filter) into sums of their cepstra, for linear separation. In particular, the power cepstrum is often used as a feature vector for representing the human voice and musical signals. For these applications, the spectrum is usually first transformed using the mel scale. The result is called the mel-frequency cepstrum or MFC (its coefficients are called mel-frequency cepstral coefficients, or MFCCs). It is used for voice identification, pitch detection and much more. The cepstrum is useful in these applications because the low-frequency periodic excitation from the vocal cords and the formant filtering of the vocal tract, which convolve in the time domain and multiply in the frequency domain, are additive and in different regions in the quefrency domain.

Note that a pure sine wave can not be used to test the cepstrum for its pitch determination from quefrency as a pure sine wave does not contain any harmonics and does not lead to quefrency peaks. Rather, a test signal containing harmonics should be used (such as the sum of at least two sines where the second sine is some harmonic (multiple) of the first sine, or better, a signal with a square or triangle waveform, as such signals provide many overtones in the spectrum.).

An important property of the cepstral domain is that the convolution of two signals can be expressed as the addition of their complex cepstra:

 

Applications edit

The concept of the cepstrum has led to numerous applications:[2][3]

  • dealing with reflection inference (radar, sonar applications, earth seismology)
  • estimation of speaker fundamental frequency (pitch)
  • speech analysis and recognition
  • medical applications in analysis of electroencephalogram (EEG) and brain waves
  • machine vibration analysis based on harmonic patterns (gearbox faults, turbine blade failures, ...)[2][4][5]

Recently, cepstrum-based deconvolution was used on surface electromyography signals, to remove the effect of the stochastic impulse train, which originates an sEMG signal, from the power spectrum of the sEMG signal itself. In this way, only information about the motor unit action potential (MUAP) shape and amplitude was maintained, which was then used to estimate the parameters of a time-domain model of the MUAP itself.[15]

A short-time cepstrum analysis was proposed by Schroeder and Noll in the 1960s for application to pitch determination of human speech.[16][17][14]

References edit

  1. ^ a b c d B. P. Bogert, M. J. R. Healy, and J. W. Tukey, The Quefrency Alanysis [sic] of Time Series for Echoes: Cepstrum, Pseudo Autocovariance, Cross-Cepstrum and Saphe Cracking, Proceedings of the Symposium on Time Series Analysis (M. Rosenblatt, Ed) Chapter 15, 209-243. New York: Wiley, 1963.
  2. ^ a b c d e f g h i j k l m Norton, Michael Peter; Karczub, Denis (November 17, 2003). Fundamentals of Noise and Vibration Analysis for Engineers. Cambridge University Press. ISBN 0-521-49913-5.
  3. ^ a b c d e f g h D. G. Childers, D. P. Skinner, R. C. Kemerait, "The Cepstrum: A Guide to Processing", Proceedings of the IEEE, Vol. 65, No. 10, October 1977, pp. 1428–1443.
  4. ^ a b c d R.B. Randall: Cepstrum Analysis and Gearbox Fault Diagnosis, Brüel&Kjaer Application Notes 233-80, Edition 2. (PDF)
  5. ^ a b Beckhoff information system: TF3600 TC3 Condition Monitoring: Gearbox monitoring (online, 4.4.2020).
  6. ^ "Real cepstrum and minimum-phase reconstruction - MATLAB rceps".
  7. ^ A. V. Oppenheim, "Superposition in a class of nonlinear systems" Ph.D. diss., Res. Lab. Electronics, M.I.T. 1965.
  8. ^ A. V. Oppenheim, R. W. Schafer, "Digital Signal Processing", 1975 (Prentice Hall).
  9. ^ R.B. Randall:, "A history of cepstrum analysis and its application to mechanical problems", (PDF) in: Mechanical Systems and Signal Processing, Volume 97, December 2017 (Elsevier).
  10. ^ Steinbuch, Karl W.; Weber, Wolfgang; Heinemann, Traute, eds. (1974) [1967]. Taschenbuch der Informatik – Band III – Anwendungen und spezielle Systeme der Nachrichtenverarbeitung (in German). Vol. 3 (3 ed.). Berlin, Germany: Springer Verlag. pp. 272–274. ISBN 3-540-06242-4. LCCN 73-80607. {{cite book}}: |work= ignored (help)
  11. ^ "Introduction - Discrete Cepstrum". Support.ircam.fr. January 1, 1990. Retrieved September 16, 2022.
  12. ^ "Predictive decomposition of time series with applications to seismic exploration", E. A. Robinson MIT report 1954; Geophysics 1967 vol. 32, pp. 418–484;
    "Use of the kepstrum in signal analysis", M. T. Silvia and E. A. Robinson, Geoexploration, volume 16, issues 1–2, April 1978, pages 55–73.
  13. ^ "A kepstrum approach to filtering, smoothing and prediction with application to speech enhancement", T. J. Moir and J. F. Barrett, Proc. Royal Society A, vol. 459, 2003, pp. 2957–2976.
  14. ^ a b A. Michael Noll (1967), “Cepstrum Pitch Determination”, Journal of the Acoustical Society of America, Vol. 41, No. 2, pp. 293–309.
  15. ^ G. Biagetti, P. Crippa, S. Orcioni, and C. Turchetti, “Homomorphic deconvolution for muap estimation from surface emg signals,” IEEE Journal of Biomedical and Health Informatics, vol. 21, no. 2, pp. 328– 338, March 2017.
  16. ^ A. Michael Noll and Manfred R. Schroeder, "Short-Time 'Cepstrum' Pitch Detection," (abstract) Journal of the Acoustical Society of America, Vol. 36, No. 5, p. 1030
  17. ^ A. Michael Noll (1964), “Short-Time Spectrum and Cepstrum Techniques for Vocal-Pitch Detection”, Journal of the Acoustical Society of America, Vol. 36, No. 2, pp. 296–302.

Further reading edit

  • Childers, D.G.; Skinner, D.P.; Kemerait, R.C. (1977). "The cepstrum: A guide to processing". Proceedings of the IEEE. 65 (10). Institute of Electrical and Electronics Engineers (IEEE): 1428–1443. Bibcode:1977IEEEP..65.1428C. doi:10.1109/proc.1977.10747. ISSN 0018-9219. S2CID 6108941.
  • Oppenheim, A.V.; Schafer, R.W. (2004). "Dsp history - From frequency to quefrency: a history of the cepstrum". IEEE Signal Processing Magazine. 21 (5). Institute of Electrical and Electronics Engineers (IEEE): 95–106. Bibcode:2004ISPM...21...95O. doi:10.1109/msp.2004.1328092. ISSN 1053-5888. S2CID 1162306.
  • "Speech Signal Analysis"
  • "Speech analysis: Cepstral analysis vs. LPC", www.advsolned.com
  • "A tutorial on Cepstrum and LPCCs"

cepstrum, cepstral, redirects, here, text, speech, company, cepstral, company, fourier, analysis, cepstrum, plural, cepstra, adjective, cepstral, result, computing, inverse, fourier, transform, logarithm, estimated, signal, spectrum, method, tool, investigatin. Cepstral redirects here For the text to speech company see Cepstral company In Fourier analysis the cepstrum ˈ k ɛ p s t r ʌ m ˈ s ɛ p s t r e m plural cepstra adjective cepstral is the result of computing the inverse Fourier transform IFT of the logarithm of the estimated signal spectrum The method is a tool for investigating periodic structures in frequency spectra The power cepstrum has applications in the analysis of human speech The term cepstrum was derived by reversing the first four letters of spectrum Operations on cepstra are labelled quefrency analysis or quefrency alanysis 1 liftering or cepstral analysis It may be pronounced in the two ways given the second having the advantage of avoiding confusion with kepstrum Steps in forming cepstrum from time history Contents 1 Origin 2 General definition 3 Types 3 1 Power cepstrum 3 2 Complex cepstrum 4 Related concepts 5 Interpretation 6 Applications 7 References 8 Further readingOrigin editThe concept of the cepstrum was introduced in 1963 by B P Bogert M J Healy and J W Tukey 1 It serves as a tool to investigate periodic structures in frequency spectra 2 Such effects are related to noticeable echos or reflections in the signal or to the occurrence of harmonic frequencies partials overtones Mathematically it deals with the problem of deconvolution of signals in the frequency space 3 References to the Bogert paper in a bibliography are often edited incorrectly citation needed The terms quefrency alanysis cepstrum and saphe were invented by the authors by rearranging the letters in frequency analysis spectrum and phase The invented terms are defined in analogy to the older terms General definition editThe cepstrum is the result of following sequence of mathematical operations transformation of a signal from the time domain to the frequency domain computation of the logarithm of the spectral amplitude transformation to frequency domain where the final independent variable the quefrency has a time scale 1 2 3 Types editThe cepstrum is used in many variants Most important are power cepstrum The logarithm is taken from the power spectrum complex cepstrum The logarithm is taken from the spectrum which is calculated via Fourier analysis The following abbreviations are used in the formulas to explain the cepstrum Abbreviation Explanation f t displaystyle f t nbsp Signal which is a function of time C displaystyle C nbsp Cepstrum F displaystyle mathcal F nbsp Fourier transform The abbreviation can stand i e for a continuous Fourier transform a discrete Fourier transform DFT or even a z transform as the z transform is a generalization of the DFT 3 F 1 displaystyle mathcal F 1 nbsp Inverse of the fourier transform log x displaystyle log x nbsp Logarithm of x The choice of the base b depends on the user In some articles the base is not specified others prefer base 10 or e The choice of the base has no impact on the basic calculation rules but sometimes base e leads to simplifications see complex cepstrum x displaystyle left x right nbsp Absolute value or magnitude of a complex value which is calculated from real and imaginary part using the Pythagorean theorem x 2 displaystyle left x right 2 nbsp Absolute square f displaystyle varphi nbsp Phase angle of a complex value Power cepstrum edit The cepstrum was originally defined as power cepstrum by the following relationship 1 3 C p F 1 log F f t 2 2 displaystyle C p left mathcal F 1 left log left left mathcal F f t right 2 right right right 2 nbsp The power cepstrum has main applications in analysis of sound and vibration signals It is a complementary tool to spectral analysis 2 Sometimes it is also defined as 2 C p F log F f t 2 2 displaystyle C p left mathcal F left log left left mathcal F f t right 2 right right right 2 nbsp Due to this formula the cepstrum is also sometimes called the spectrum of a spectrum It can be shown that both formulas are consistent with each other as the frequency spectral distribution remains the same the only difference being a scaling factor 2 which can be applied afterwards Some articles prefer the second formula 2 4 Other notations are possible due to the fact that the log of the power spectrum is equal to the log of the spectrum if a scaling factor 2 is applied 5 log F 2 2 log F displaystyle log mathcal F 2 2 log mathcal F nbsp and therefore C p F 1 2 log F 2 or displaystyle C p left mathcal F 1 left 2 log mathcal F right right 2 text or nbsp C p 4 F 1 log F 2 displaystyle C p 4 cdot left mathcal F 1 left log mathcal F right right 2 nbsp which provides a relationship to the real cepstrum see below Further it shall be noted that the final squaring operation in the formula for the power spectrum C p displaystyle C p nbsp is sometimes called unnecessary 3 and therefore sometimes omitted 4 2 The real cepstrum is directly related to the power cepstrum C p 4 C r 2 displaystyle C p 4 cdot C r 2 nbsp It is derived from the complex cepstrum defined below by discarding the phase information contained in the imaginary part of the complex logarithm 4 It has a focus on periodic effects in the amplitudes of the spectrum 6 C r F 1 log F f t displaystyle C r mathcal F 1 left log mathcal mathcal F f t right nbsp Complex cepstrum edit The complex cepstrum was defined by Oppenheim in his development of homomorphic system theory 7 8 The formula is provided also in other literature 2 C c F 1 log F f t displaystyle C c mathcal F 1 left log mathcal F f t right nbsp As F displaystyle mathcal F nbsp is complex the log term can be also written with F displaystyle mathcal F nbsp as a product of magnitude and phase and subsequently as a sum Further simplification is obvious if log is a natural logarithm with base e log F log F e i f displaystyle log mathcal F log mathcal F cdot e i varphi nbsp log e F log e F log e e i f log e F i f displaystyle log e mathcal F log e mathcal F log e e i varphi log e mathcal F i varphi nbsp Therefore The complex cepstrum can be also written as 9 C c F 1 log e F i f displaystyle C c mathcal F 1 left log e mathcal F i varphi right nbsp The complex cepstrum retains the information about the phase Thus it is always possible to return from the quefrency domain to the time domain by the inverse operation 2 3 f t F 1 b F C c displaystyle f t mathcal F 1 left b left mathcal F C c right right nbsp where b is the base of the used logarithm Main application is the modification of the signal in the quefrency domain liftering as an analog operation to filtering in the spectral frequency domain 2 3 An example is the suppression of echo effects by suppression of certain quefrencies 2 The phase cepstrum after phase spectrum is related to the complex cepstrum as phase spectrum complex cepstrum time reversal of complex cepstrum 2 Related concepts editThe independent variable of a cepstral graph is called the quefrency 10 The quefrency is a measure of time though not in the sense of a signal in the time domain For example if the sampling rate of an audio signal is 44100 Hz and there is a large peak in the cepstrum whose quefrency is 100 samples the peak indicates the presence of a fundamental frequency that is 44100 100 441 Hz This peak occurs in the cepstrum because the harmonics in the spectrum are periodic and the period corresponds to the fundamental frequency since harmonics are integer multiples of the fundamental frequency 11 The kepstrum which stands for Kolmogorov equation power series time response is similar to the cepstrum and has the same relation to it as expected value has to statistical average i e cepstrum is the empirically measured quantity while kepstrum is the theoretical quantity It was in use before the cepstrum 12 13 The autocepstrum is defined as the cepstrum of the autocorrelation The autocepstrum is more accurate than the cepstrum in the analysis of data with echoes Playing further on the anagram theme a filter that operates on a cepstrum might be called a lifter A low pass lifter is similar to a low pass filter in the frequency domain It can be implemented by multiplying by a window in the quefrency domain and then converting back to the frequency domain resulting in a modified signal i e with signal echo being reduced Interpretation editThe cepstrum can be seen as information about the rate of change in the different spectrum bands It was originally invented for characterizing the seismic echoes resulting from earthquakes and bomb explosions It has also been used to determine the fundamental frequency of human speech and to analyze radar signal returns Cepstrum pitch determination is particularly effective because the effects of the vocal excitation pitch and vocal tract formants are additive in the logarithm of the power spectrum and thus clearly separate 14 The cepstrum is a representation used in homomorphic signal processing to convert signals combined by convolution such as a source and filter into sums of their cepstra for linear separation In particular the power cepstrum is often used as a feature vector for representing the human voice and musical signals For these applications the spectrum is usually first transformed using the mel scale The result is called the mel frequency cepstrum or MFC its coefficients are called mel frequency cepstral coefficients or MFCCs It is used for voice identification pitch detection and much more The cepstrum is useful in these applications because the low frequency periodic excitation from the vocal cords and the formant filtering of the vocal tract which convolve in the time domain and multiply in the frequency domain are additive and in different regions in the quefrency domain Note that a pure sine wave can not be used to test the cepstrum for its pitch determination from quefrency as a pure sine wave does not contain any harmonics and does not lead to quefrency peaks Rather a test signal containing harmonics should be used such as the sum of at least two sines where the second sine is some harmonic multiple of the first sine or better a signal with a square or triangle waveform as such signals provide many overtones in the spectrum An important property of the cepstral domain is that the convolution of two signals can be expressed as the addition of their complex cepstra x 1 x 2 x 1 x 2 displaystyle x 1 x 2 mapsto x 1 x 2 nbsp Applications editThe concept of the cepstrum has led to numerous applications 2 3 dealing with reflection inference radar sonar applications earth seismology estimation of speaker fundamental frequency pitch speech analysis and recognition medical applications in analysis of electroencephalogram EEG and brain waves machine vibration analysis based on harmonic patterns gearbox faults turbine blade failures 2 4 5 Recently cepstrum based deconvolution was used on surface electromyography signals to remove the effect of the stochastic impulse train which originates an sEMG signal from the power spectrum of the sEMG signal itself In this way only information about the motor unit action potential MUAP shape and amplitude was maintained which was then used to estimate the parameters of a time domain model of the MUAP itself 15 A short time cepstrum analysis was proposed by Schroeder and Noll in the 1960s for application to pitch determination of human speech 16 17 14 References edit a b c d B P Bogert M J R Healy and J W Tukey The Quefrency Alanysis sic of Time Series for Echoes Cepstrum Pseudo Autocovariance Cross Cepstrum and Saphe Cracking Proceedings of the Symposium on Time Series Analysis M Rosenblatt Ed Chapter 15 209 243 New York Wiley 1963 a b c d e f g h i j k l m Norton Michael Peter Karczub Denis November 17 2003 Fundamentals of Noise and Vibration Analysis for Engineers Cambridge University Press ISBN 0 521 49913 5 a b c d e f g h D G Childers D P Skinner R C Kemerait The Cepstrum A Guide to Processing Proceedings of the IEEE Vol 65 No 10 October 1977 pp 1428 1443 a b c d R B Randall Cepstrum Analysis and Gearbox Fault Diagnosis Bruel amp Kjaer Application Notes 233 80 Edition 2 PDF a b Beckhoff information system TF3600 TC3 Condition Monitoring Gearbox monitoring online 4 4 2020 Real cepstrum and minimum phase reconstruction MATLAB rceps A V Oppenheim Superposition in a class of nonlinear systems Ph D diss Res Lab Electronics M I T 1965 A V Oppenheim R W Schafer Digital Signal Processing 1975 Prentice Hall R B Randall A history of cepstrum analysis and its application to mechanical problems PDF in Mechanical Systems and Signal Processing Volume 97 December 2017 Elsevier Steinbuch Karl W Weber Wolfgang Heinemann Traute eds 1974 1967 Taschenbuch der Informatik Band III Anwendungen und spezielle Systeme der Nachrichtenverarbeitung in German Vol 3 3 ed Berlin Germany Springer Verlag pp 272 274 ISBN 3 540 06242 4 LCCN 73 80607 a href Template Cite book html title Template Cite book cite book a work ignored help Introduction Discrete Cepstrum Support ircam fr January 1 1990 Retrieved September 16 2022 Predictive decomposition of time series with applications to seismic exploration E A Robinson MIT report 1954 Geophysics 1967 vol 32 pp 418 484 Use of the kepstrum in signal analysis M T Silvia and E A Robinson Geoexploration volume 16 issues 1 2 April 1978 pages 55 73 A kepstrum approach to filtering smoothing and prediction with application to speech enhancement T J Moir and J F Barrett Proc Royal Society A vol 459 2003 pp 2957 2976 a b A Michael Noll 1967 Cepstrum Pitch Determination Journal of the Acoustical Society of America Vol 41 No 2 pp 293 309 G Biagetti P Crippa S Orcioni and C Turchetti Homomorphic deconvolution for muap estimation from surface emg signals IEEE Journal of Biomedical and Health Informatics vol 21 no 2 pp 328 338 March 2017 A Michael Noll and Manfred R Schroeder Short Time Cepstrum Pitch Detection abstract Journal of the Acoustical Society of America Vol 36 No 5 p 1030 A Michael Noll 1964 Short Time Spectrum and Cepstrum Techniques for Vocal Pitch Detection Journal of the Acoustical Society of America Vol 36 No 2 pp 296 302 Further reading editChilders D G Skinner D P Kemerait R C 1977 The cepstrum A guide to processing Proceedings of the IEEE 65 10 Institute of Electrical and Electronics Engineers IEEE 1428 1443 Bibcode 1977IEEEP 65 1428C doi 10 1109 proc 1977 10747 ISSN 0018 9219 S2CID 6108941 Oppenheim A V Schafer R W 2004 Dsp history From frequency to quefrency a history of the cepstrum IEEE Signal Processing Magazine 21 5 Institute of Electrical and Electronics Engineers IEEE 95 106 Bibcode 2004ISPM 21 95O doi 10 1109 msp 2004 1328092 ISSN 1053 5888 S2CID 1162306 Speech Signal Analysis Speech analysis Cepstral analysis vs LPC www advsolned com A tutorial on Cepstrum and LPCCs Retrieved from https en wikipedia org w index php title Cepstrum amp oldid 1221578523, wikipedia, wiki, book, books, library,

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