|Department of Engineering|
|University of Cambridge > Engineering Department > Machine Intelligence Lab|
PARALLEL MODEL COMBINATION FOR SPEECH RECOGNITION IN NOISE
M. J. F. Gales and S. J. Young
This report addresses the problem of automatic speech recognition in the presence of interfering noise. The approach adopted is to compensate the parameters of a clean speech model given the statistics of the interfering noise. In this work these statistics are assumed to be modelled by a Hidden Markov Model (HMM). The basic theory of static coefficient Parallel Model Combination (PMC) is reviewed and placed within the framework of approximating the Maximum Likelihood (ML) estimate of the corrupted speech model, given the clean speech and interfering noise models. In addition the paper examines the problem of compensating delta coefficients in a PMC framework. Expressions for ML estimates of delta coefficients are derived and computationally efficient approximations of these estimates are given. The effectiveness of compensating delta parameters is discussed.
Keywords: speech recognition, noise compensation, HMM, PMC.
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2005 Cambridge University Engineering Dept
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