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Noise Adaptive Speech Enhancement using Domain Adversarial Training

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In this study, we propose a novel noise adaptive speech enhancement (SE) system, which employs a domain adversarial training (DAT) approach to tackle the issue of a noise type mismatch between the training and testing conditions. Such a mismatch is a critical problem in deep-learning-based SE systems. A large mismatch may cause a serious performance degradation to the SE performance. Because we generally use a well-trained SE system to handle various unseen noise types, a noise type mismatch commonly occurs in real-world scenarios. The proposed noise adaptive SE system contains an encoder-decoder-based enhancement model and a domain discriminator model. During adaptation, the DAT approach encourages the encoder to produce noise-invariant features based on the information from the discriminator model and consequentially increases the robustness of the enhancement model to unseen noise types. Herein, we regard stationary noises as the source domain (with the ground truth of clean speech) and non-stationary noises as the target domain (without the ground truth). We evaluated the proposed system on TIMIT sentences. The experiment results show that the proposed noise adaptive SE system successfully provides significant improvements in PESQ (19.0%), SSNR (39.3%), and STOI (27.0%) over the SE system without an adaptation.

Chien-Feng Liao, Yu Tsao, Hung-Yi Lee, Hsin-Min Wang• 2018

Related benchmarks

TaskDatasetResultRank
Speech EnhancementVoiceBank-DEMAND Traffic 1.0 (test)
PESQ3.016
24
Speech EnhancementTIMIT Baby-cry noise
PESQ2.133
24
Speech EnhancementTIMIT Crowd-party noise
PESQ2.2
24
Speech EnhancementTIMIT Cafeteria noise
PESQ2.216
24
Speech EnhancementVoiceBank-DEMAND Traffic
STOI88.5
24
Speech EnhancementVoiceBank-DEMAND Cafe
STOI85.4
24
Speech EnhancementVoiceBank-DEMAND Public square
STOI0.893
24
Speech EnhancementTIMIT Helicopter noise
PESQ2.094
24
Speech EnhancementVoiceBank-DEMAND Cafe 1.0 (test)
PESQ1.679
3
Speech EnhancementVoiceBank-DEMAND Public square 1.0 (test)
PESQ Score2.266
3
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