Abstract

A method of model adaptation for noisy speech recognition determines the cepstral mean vector and covariance matrix of adapted noisy speech from the cepstral mean vectors and covariance matrices of speech and noise. The cepstral mean vectors of noise and speech are first transferred into the linear spectral domain, respectively. The linear spectral mean vectors of noise and speech are then combined to obtain a linear spectral mean vector of noisy speech. Next, the linear spectral mean vector of noisy speech is transferred from the linear spectral domain into the cepstral domain, so as to determine the cepstral mean vector of adapted noisy speech. Further, the cepstral covariance matrices of speech and noise are multiplied by a first and a second scaling factor, respectively, and the multiplied cepstral covariance matrices are combined together, so as to determine the cepstral covariance matrix of adapted noisy speech.

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