Factor analysis based VTS and JUD noise estimation and compensation

ICASSP(2011)

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摘要
Model based compensation schemes are a powerful approach for noise robust speech recognition. Recently there have been a number of investigations into adaptive training, and estimating the noise models used for model adaptation. This paper examines the use of EM-based schemes for both canonical models and noise estimation, including discriminative adaptive training. One issue that arises when estimating the noise model is a mismatch between the noise estimation approximation and final model compensation scheme. This paper proposes FA-style compensation where this mismatch is eliminated, though at the expense of a sensitivity to the initial noise estimates. EM-based discriminative adaptive training is evaluated on in-car and Aurora4 tasks. FA-style compensation is then evaluated in an incremental mode on the in-car task.
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关键词
fa-style compensation,speech recognition,jud noise estimation,noise robustness,noise robust speech recognition,canonical models,adaptive training,em-based discriminative adaptive training,factor analysis,vts,aurora4 tasks,noise,speech,second order,canonical model,estimation
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