Article ID Journal Published Year Pages File Type
408931 Neurocomputing 2008 7 Pages PDF
Abstract

In order to overcome a limited performance of a conventional monaural model, this letter proposes a binaural blind dereverberation model. Its learning rule is derived using a blind least-squares measure by exploiting higher-order characteristics of output components. In order to prevent an unwanted whitening of speech signal, we adopt a semi-blind approach by employing a pre-determined whitening filter. The proposed model is evaluated using several simulated conditions and the results show better speech quality than those of the monaural model. The applicability of the model to the real environment is also shown by applying to real-recorded data. Especially, the proposed model attains much improved word error rates from 13.9±5.7(%)13.9±5.7(%) to 4.1±3.5(%)4.1±3.5(%) across 13 speakers for testing in the real speech recognition experiments.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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