Title :
Spectral analysis of speech by linear prediction
Author_Institution :
Bolt Beranek and Newman, Inc., Cambridge, Mass
fDate :
6/1/1973 12:00:00 AM
Abstract :
The autocorrelation method of linear prediction is formulated in the time, autocorrelation, and spectral domains. The analysis is shown to be that of approximating the short-time signal power spectrum by an all-pole spectrum. The method is compared with other methods of spectral analysis such as analysis-by-synthesis and cepstral smoothing. It is shown that this method can be regarded as another method of analysis-by-synthesis where a number of poles is specified, with the advantages of noniterative computation and an error measure which leads to a better spectral envelope fit for an all-pole spectrum. Compared to spectral analysis by cepstral smoothing in conjunction with the chirp z transform (CZT), this method is expected to give a better spectral envelope fit (for an all-pole spectrum) and to be less sensitive to the effects of high pitch on the spectrum. The normalized minimum error is defined and its possible usefulness as a voicing detector is discussed.
Keywords :
Autocorrelation; Cepstral analysis; Chirp; Delta modulation; Detectors; Least squares approximation; Signal analysis; Smoothing methods; Spectral analysis; Speech analysis;
Journal_Title :
Audio and Electroacoustics, IEEE Transactions on
DOI :
10.1109/TAU.1973.1162470