DocumentCode :
2268116
Title :
Toward a practical implementation of exemplar-based noise robust ASR
Author :
Gemmeke, Jort F. ; Hurmalainen, Antti ; Virtanen, Tuomas ; Yang Sun
Author_Institution :
Dept. of Linguistics, Radboud Univ., Nijmegen, Netherlands
fYear :
2011
fDate :
Aug. 29 2011-Sept. 2 2011
Firstpage :
1490
Lastpage :
1494
Abstract :
In previous work it was shown that, at least in principle, an exemplar-based approach to noise robust ASR is possible. The method, sparse representation based classification (SC), works by modelling noisy speech as a sparse linear combination of speech and noise exemplars. After recovering the sparsest possible linear combination of labelled exemplars, noise robust posterior likelihoods are estimated by using the weights of the exemplars as evidence of the state labels underlying exemplars. Although promising recognition accuracies at low SNRs were obtained, the method was impractical due to its slow execution speed. Moreover, the performance was not as good on noisy speech corrupted by noise types not represented by the noise exemplars. The importance of sparsity was poorly understood, and the influence of the size of the exemplar-dictionary was unclear. In this paper we investigate all these issues, and we show for example that speedups of a factor 28 can be obtained by using modern GPUs, bringing its execution speed within range to practical applications.
Keywords :
graphics processing units; maximum likelihood estimation; signal classification; signal representation; speech recognition; GPU; SC; SNR; automatic speech recognition; exemplar-based noise robust ASR; noise robust posterior likelihood; noisy speech modelling; sparse linear combination; sparse representation based classification; Accuracy; Dictionaries; Graphics processing units; Noise measurement; Signal to noise ratio; Speech;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Conference, 2011 19th European
Conference_Location :
Barcelona
ISSN :
2076-1465
Type :
conf
Filename :
7074048
Link To Document :
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