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Multi-Channel Narrow-Band Deep Speech Separation with Full-Band Permutation Invariant Training

Changsheng Quan, Xiaofei Li

2022ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)18 citationsDOI

Abstract

This paper addresses the problem of multi-channel multi-speech separation based on deep learning techniques. In the short time Fourier transform domain, we propose an end-to-end narrow-band network that directly takes as input the multi-channel mixture signals of one frequency, and outputs the separated signals of this frequency. In narrow-band, the spatial information (or inter-channel difference) can well discriminate between speakers at different positions. This information is intensively used in many narrow-band speech separation methods, such as beamforming and clustering of spatial vectors. The proposed network is trained to learn a rule to automatically exploit this information and perform speech separation. Such a rule should be valid for any frequency, thence the network is shared by all frequencies. In addition, a full-band permutation invariant training criterion is proposed to solve the frequency permutation problem encountered by most narrow-band methods. Experiments show that, by focusing on deeply learning the narrow-band information, the proposed method outperforms the oracle beamforming method and the state-of-the-art deep learning based method.

Topics & Concepts

Computer scienceFrequency domainCluster analysisFrequency bandPermutation (music)BeamformingSpeech recognitionDeep learningArtificial intelligenceInvariant (physics)OracleChannel (broadcasting)AlgorithmPattern recognition (psychology)MathematicsTelecommunicationsBandwidth (computing)AcousticsPhysicsMathematical physicsComputer visionSoftware engineeringSpeech and Audio ProcessingAdvanced Adaptive Filtering TechniquesBlind Source Separation Techniques
Multi-Channel Narrow-Band Deep Speech Separation with Full-Band Permutation Invariant Training | Litcius