{"id":371972,"date":"2017-03-17T17:21:14","date_gmt":"2017-03-18T00:21:14","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?post_type=msr-research-item&p=371972"},"modified":"2020-06-04T17:45:33","modified_gmt":"2020-06-05T00:45:33","slug":"causal-speech-enhancement-approach-combining-data-driven-learning-suppression-rule-estimation","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/causal-speech-enhancement-approach-combining-data-driven-learning-suppression-rule-estimation\/","title":{"rendered":"A Causal Speech Enhancement Approach Combining Data-driven Learning and Suppression Rule Estimation"},"content":{"rendered":"

The problem of single-channel speech enhancement has been traditionally addressed by using statistical signal processing algorithms that are designed to suppress time-frequency regions affected by noise. We study an alternative data-driven approach which uses deep neural networks (DNNs) to learn the transformation from noisy and reverberant speech to clean speech, with a focus on real-time applications which require low-latency causal processing. We examine several structures in which deep learning can be used within an enhancement system. These include end-to-end DNN regression from noisy to clean spectra, as well as less intervening approaches which estimate a suppression gain for each time-frequency bin instead of directly recovering the clean spectral features. We also propose a novel architecture in which the general structure of a conventional noise suppressor is preserved, but the sub-tasks are independently learned and carried out by separate networks. It is shown that DNN-based suppression gain estimation outperforms the regression approach in the causal processing mode and for noise types that are not seen during DNN training.<\/p>\n","protected":false},"excerpt":{"rendered":"

The problem of single-channel speech enhancement has been traditionally addressed by using statistical signal processing algorithms that are designed to suppress time-frequency regions affected by noise. We study an alternative data-driven approach which uses deep neural networks (DNNs) to learn the transformation from noisy and reverberant speech to clean speech, with a focus on real-time 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