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Papers/Perceptual Contrast Stretching on Target Feature for Speec...

Perceptual Contrast Stretching on Target Feature for Speech Enhancement

Rong Chao, Cheng Yu, Szu-Wei Fu, Xugang Lu, Yu Tsao

2022-03-31Speech Enhancement
PaperPDFCode(official)

Abstract

Speech enhancement (SE) performance has improved considerably owing to the use of deep learning models as a base function. Herein, we propose a perceptual contrast stretching (PCS) approach to further improve SE performance. The PCS is derived based on the critical band importance function and is applied to modify the targets of the SE model. Specifically, the contrast of target features is stretched based on perceptual importance, thereby improving the overall SE performance. Compared with post-processing-based implementations, incorporating PCS into the training phase preserves performance and reduces online computation. Notably, PCS can be combined with different SE model architectures and training criteria. Furthermore, PCS does not affect the causality or convergence of SE model training. Experimental results on the VoiceBank-DEMAND dataset show that the proposed method can achieve state-of-the-art performance on both causal (PESQ score = 3.07) and noncausal (PESQ score = 3.35) SE tasks.

Results

TaskDatasetMetricValueModel
Speech EnhancementVoiceBank + DEMANDCOVL3.92PCS
Speech EnhancementVoiceBank + DEMANDCSIG4.43PCS
Speech EnhancementVoiceBank + DEMANDPESQ (wb)3.35PCS
Speech EnhancementVoiceBank + DEMANDSTOI95PCS

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