DocumentCode :
1303489
Title :
Maximum likelihood and minimum classification error factor analysis for automatic speech recognition
Author :
Saul, Lawrence K. ; Rahim, Mazin G.
Author_Institution :
AT&T Bell Labs., Florham Park, NJ, USA
Volume :
8
Issue :
2
fYear :
2000
fDate :
3/1/2000 12:00:00 AM
Firstpage :
115
Lastpage :
125
Abstract :
Hidden Markov models (HMMs) for automatic speech recognition rely on high dimensional feature vectors to summarize the short-time properties of speech. Correlations between features can arise when the speech signal is nonstationary or corrupted by noise. We investigate how to model these correlations using factor analysis, a statistical method for dimensionality reduction. Factor analysis uses a small number of parameters to model the covariance structure of high dimensional data. These parameters can be chosen in two ways: (1) to maximize the likelihood of observed speech signals, or (2) to minimize the number of classification errors. We derive an expectation-maximization (EM) algorithm for maximum likelihood estimation and a gradient descent algorithm for improved class discrimination. Speech recognizers are evaluated on two tasks, one small-sized vocabulary (connected alpha-digits) and one medium-sized vocabulary (New Jersey town names). We find that modeling feature correlations by factor analysis leads to significantly increased likelihoods and word accuracies. Moreover, the rate of improvement with model size often exceeds that observed in conventional HMM´s
Keywords :
Gaussian processes; correlation methods; covariance analysis; error analysis; feature extraction; gradient methods; hidden Markov models; maximum likelihood estimation; optimisation; probability; signal classification; speech recognition; EM algorithm; Gaussian PDF; HMM; New Jersey town names; automatic speech recognition; class discrimination; connected alpha-digits recognition; covariance structure; dimensionality reduction; expectation-maximization algorithm; factor analysis; feature correlations modeling; gradient descent algorithm; hidden Markov models; high dimensional data; high dimensional feature vectors; maximum likelihood estimation; medium-sized vocabulary; minimum classification error; noise corrupted signal; nonstationary signal; observed speech signals; small-sized vocabulary; speech recognizers; speech short-time properties; speech signal; statistical method; word accuracies; Automatic speech recognition; Cities and towns; Error analysis; Hidden Markov models; Maximum likelihood estimation; Speech analysis; Speech enhancement; Speech recognition; Statistical analysis; Vocabulary;
fLanguage :
English
Journal_Title :
Speech and Audio Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6676
Type :
jour
DOI :
10.1109/89.824696
Filename :
824696
Link To Document :
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