SDCLASOct 4, 2020

Multi-microphone Complex Spectral Mapping for Utterance-wise and Continuous Speech Separation

arXiv:2010.01703v2107 citations
Originality Incremental advance
AI Analysis

This work addresses speech separation for applications like hearing aids or conferencing, but it is incremental as it builds on existing beamforming and deep learning methods.

The authors tackled speaker separation and dereverberation in reverberant conditions using multi-microphone complex spectral mapping, achieving state-of-the-art performance on simulated and real datasets.

We propose multi-microphone complex spectral mapping, a simple way of applying deep learning for time-varying non-linear beamforming, for speaker separation in reverberant conditions. We aim at both speaker separation and dereverberation. Our study first investigates offline utterance-wise speaker separation and then extends to block-online continuous speech separation (CSS). Assuming a fixed array geometry between training and testing, we train deep neural networks (DNN) to predict the real and imaginary (RI) components of target speech at a reference microphone from the RI components of multiple microphones. We then integrate multi-microphone complex spectral mapping with minimum variance distortionless response (MVDR) beamforming and post-filtering to further improve separation, and combine it with frame-level speaker counting for block-online CSS. Although our system is trained on simulated room impulse responses (RIR) based on a fixed number of microphones arranged in a given geometry, it generalizes well to a real array with the same geometry. State-of-the-art separation performance is obtained on the simulated two-talker SMS-WSJ corpus and the real-recorded LibriCSS dataset.

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