Fundamentals of speech recognition
Fundamentals of speech recognition
Speech recognition in noisy environments
Speech recognition in noisy environments
A Data-Driven Model Parameter Compensation Method for Noise-Robust Speech Recognition
IEICE - Transactions on Information and Systems
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A method to improve the robustness of the Jacobian adaptation (JA) is proposed. Although it is a usual idea that the reference hidden Markov model (HMM) in the JA is constructed by using the model composition methods like the parallel model combination (PMC), we propose to train the reference HMM directly with the noisy speech and then select the appropriate reference HMM based on the noise types and signal to noise ratio (SNR) values obtained from the input noisy speech. For the estimation of Jacobian matrices and other statistical information for the JA, a data driven method is employed during the training.