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Teacher-Student Learning for Low-Latency Online Speech Enhancement Using Wave-U-Net

Sotaro Nakaoka, Li Li, Shota Inoue, Shoji Makino

202124 citationsDOI

Abstract

In this paper, we propose a low-latency online extension of wave-U-net for single-channel speech enhancement, which utilizes teacher-student learning to reduce the system latency while keeping the enhancement performance high. Wave-U-net is a recently proposed end-to-end source separation method, which achieved remarkable performance in singing voice separation and speech enhancement tasks. Since the enhancement is performed in the time domain, wave-U-net can efficiently model phase information and address the domain transformation limitation, where the time-frequency domain is normally adopted. In this paper, we apply wave-U-net to face-to-face applications such as hearing aids and in-car communication systems, where a strictly low-latency of less than 10 ms is required. To this end, we investigate online versions of wave-U-net and propose the use of teacher-student learning to prevent the performance degradation caused by the reduction in input segment length such that the system delay in a CPU is less than 10 ms. The experimental results revealed that the proposed model could perform in real-time with low-latency and high performance, achieving a signal-to-distortion ratio improvement of about 8.73 dB.

Topics & Concepts

Latency (audio)Computer scienceLow latency (capital markets)Time domainPerformance improvementSpeech enhancementSpeech recognitionDeep learningFrequency domainDistortion (music)Real-time computingArtificial intelligenceComputer networkTelecommunicationsNoise reductionEngineeringComputer visionBandwidth (computing)AmplifierOperations managementSpeech and Audio ProcessingAdvanced Adaptive Filtering TechniquesMusic and Audio Processing
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