Proposes multichannel Itakura-Saito divergence losses for training DNN mask estimators used in mask-based beamforming for supervised speech source separation.
GSVD-based optimal filtering for sin- gle and multimicrophone speech enhancement,
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Multichannel Loss Function for Supervised Speech Source Separation by Mask-based Beamforming
Proposes multichannel Itakura-Saito divergence losses for training DNN mask estimators used in mask-based beamforming for supervised speech source separation.