IEICE Electronics Express
Online ISSN : 1349-2543
ISSN-L : 1349-2543
LETTER
Discriminative transformation for speech features based on genetic algorithm and HMM likelihoods
Behzad ZamaniAhmad AkbariBabak NasersharifMehdi MohammadiAzarakhsh Jalalvand
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JOURNAL FREE ACCESS

2010 Volume 7 Issue 4 Pages 247-253

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Abstract

Hidden Markov Model (HMM) is a well-known classification approach which its parameters are conventionally learned using maximum likelihood (ML) criterion based on expectation maximization algorithm. Improving of parameter learning beyond ML has been performed based on the concept of discrimination among classes in contrast to maximizing likelihood of each individual class. In this paper, we propose a discriminative feature transformation method based on genetic algorithm, to increase Hidden Markov Model likelihoods in its training phase for a better class discrimination. The method is evaluated for phoneme recognition on clean and noisy TIMIT. Experimental results demonstrate that the proposed transformation method results in higher phone recognition rate than well-known feature transformations methods and conventional HMM learning algorithm based on ML criterion.

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© 2010 by The Institute of Electronics, Information and Communication Engineers
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