Interspeech 2014 2014
DOI: 10.21437/interspeech.2014-491
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Component structuring and trajectory modeling for speech recognition

Abstract: When the speech data are produced by speakers of different age and gender, the acoustic variability of any given phonetic unit becomes large, which degrades speech recognition performance. A way to go beyond the conventional Hidden Markov Model is to explicitly include speaker class information in the modeling. Speaker classes can be obtained by unsupervised clustering of the speech utterances.This paper introduces a structuring of the Gaussian components of the GMM densities with respect to speaker classes. I… Show more

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