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Complex Neural Spatial Filter: Enhancing Multi-Channel Target Speech Separation in Complex Domain

Rongzhi Gu, Shi-Xiong Zhang, Yuexian Zou, Dong Yu

2021IEEE Signal Processing Letters37 citationsDOIOpen Access PDF

Abstract

To date, mainstream target speech separation (TSS) approaches are formulated to estimate the complex ratio mask (cRM) of target speech in time-frequency domain under supervised deep learning framework. However, the existing methods are designed in the way that the real and imaginary parts of the cRM are separately modeled using real-valued training data pairs. The research motivation of this study is to design a deep model that fully exploits the temporal-spectral-spatial information of multi-channel signals for estimating cRM directly and efficiently in complex domain. As a result, a novel TSS network is designed consisting of two modules, a complex neural spatial filter (cNSF) and an MVDR. Essentially, cNSF is a cRM estimation model and an MVDR module is cascaded to the cNSF module to reduce the nonlinear speech distortions introduced by neural network. Specifically, to fit the cRM target, all input features of cNSF are reformulated into complex-valued representations. Then, to achieve good hierarchical feature abstraction, a complex deep neural network (cDNN) is delicately designed with U-Net structure. Experiments conducted on simulated multi-channel speech data demonstrate the proposed cNSF outperforms the baseline NSF by 12.1% scale-invariant signal-to-distortion ratio and 33.1% word error rate.

Topics & Concepts

Computer scienceArtificial neural networkArtificial intelligencePattern recognition (psychology)Speech enhancementSpeech recognitionFeature (linguistics)Domain (mathematical analysis)Deep learningFilter (signal processing)Feature extractionData modelingSpeech processingWord (group theory)Nonlinear systemFilter bankFrequency domainConvolutional neural networkExploitSignal processingTime delay neural networkSupervised learningSpectrogramSIGNAL (programming language)Time domainRecurrent neural networkMean squared errorSpeech and Audio ProcessingSpeech Recognition and SynthesisHearing Loss and Rehabilitation
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