Power-Normalized Cepstral Coefficients (PNCC) for robust speech recognition

IEEE/ACM Trans. Audio, Speech & Language Processing(2016)

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摘要
This paper presents a new feature extraction algorithm called Power Normalized Cepstral Coefficients (PNCC) that is based on auditory processing. Major new features of PNCC processing include the use of a power-law nonlinearity that replaces the traditional log nonlinearity used in MFCC coefficients, a noise-suppression algorithm based on asymmetric filtering that suppress background excitation, and a module that accomplishes temporal masking. We also propose the use of medium-time power analysis, in which environmental parameters are estimated over a longer duration than is commonly used for speech, as well as frequency smoothing. Experimental results demonstrate that PNCC processing provides substantial improvements in recognition accuracy compared to MFCC and PLP processing for speech in the presence of various types of additive noise and in reverberant environments, with only slightly greater computational cost than conventional MFCC processing, and without degrading the recognition accuracy that is observed while training and testing using clean speech. PNCC processing also provides better recognition accuracy in noisy environments than techniques such as Vector Taylor Series (VTS) and the ETSI Advanced Front End (AFE) while requiring much less computation. We describe an implementation of PNCC using “on-line processing” that does not require future knowledge of the input.
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关键词
clean speech,mfcc coefficients,rate-level curve,power-law nonlinearity,on-line speech processing,pncc processing,speech recognition,etsi advanced front end,medium-time power estimation,power-normalized cepstral coefficients,background excitation suppression,frequency smoothing,modulation filtering,temporal masking,vector taylor series,physiological modeling,noise-suppression algorithm,cepstral analysis,feature extraction,medium-time power analysis,feature extraction algorithm,auditory processing,log nonlinearity,robust speech recognition,asymmetric filtering,etsi afe,online processing,vts,reverberation,speech,accuracy,mel frequency cepstral coefficient,speech processing,noise
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