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Improving Voice Activity Detection via weighting likelihood and dimension reduction
Authors:Huanliang Wang  Jiqing Han  Haifeng Li  Tieran Zheng
Affiliation:Department of Computer Science and Technology, Harbin Institute of Technology, Harbin 150001, China
Abstract:The performance of the traditional Voice Activity Detection (VAD) algorithms declines sharply in lower Signal-to-Noise Ratio (SNR) environments. In this paper, a feature weighting likelihood method is proposed for noise-robust VAD. The contribution of dynamic features to likelihood score can be increased via the method, which improves consequently the noise robustness of VAD.Divergence based dimension reduction method is proposed for saving computation, which reduces these feature dimensions with smaller divergence value at the cost of degrading the performance a little.Experimental results on Aurora Ⅱ database show that the detection performance in noise environments can remarkably be improved by the proposed method when the model trained in clean data is used to detect speech endpoints. Using weighting likelihood on the dimension-reduced features obtains comparable, even better, performance compared to original full-dimensional feature.
Keywords:Voice Activity Detection (VAD)  Weighting likelihood  Divergence  Dimension reduction  Noise robustness
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