2020 Volume 24 Issue 4 Pages 179-182
In this paper, we propose a new training architecture for speech enhancement based on deep neural networks. In the proposed architecture, the generative model producing the noiseless speech is trained so as to minimize the difference between two statistical distribution parameters of the clean speech and generated speech. From the experimental results, we verify that the proposed method can provide better results than the conventional method.