Abstract

Utilization of blind signal separation method for the enhancement of speech recognition accuracy under multi-speaker is discussed. The separation method is based upon the ICA (Independent Component Analysis) and has very few assumptions on the mixing process of speech signals. The recognition experiments are performed under various conditions concerned with (1) acoustic environment, (2) interfering speakers and (3) recognition systems. The obtained results under those conditions are summarized as follows.(1) The separation method can improve recognition accuracy more than 20% when the SNR of interfering signal is 0 to6dB, in a soundproof room. In a reverberant room, however, the improvement of the performance is degraded to about 10%.(2) In general, the recognition accuracy deteriorated more as the number of interfering speakers increased and the more improvement by the separation is obtained.(3) There is no significant difference between DTW isolated word discrimination and HMM continuous speech recognition results except for the fact that saturation in improvement is observed in high SNR condition in HMM CSR.

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