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Monaural Speech Enhancement with Recursive Learning in the Time Domain

2020-03-22 05:36:08
Andong Li, Chengshi Zheng, Linjuan Cheng, Renhua Peng, Xiaodong Li

Abstract

In this paper, we propose a type of neural network with recursive learning in the time domain called RTNet for monaural speech enhancement, where the proposed network consists of three principal components. The first part is called stage recurrent neural network, which is proposed to effectively aggregate the deep feature dependencies across different stages with a memory mechanism and also remove the interference stageby-stage. The second part is the convolutional auto-encoder. The third part consists of a series of concatenated gated linear units, which are capable of facilitating the information flow and gradually increasing the receptive fields. Recursive learning is adopted to significantly improve the parameter efficiency and therefore, the number of trainable parameters is effectively reduced without sacrificing its performance. The experiments are conducted on TIMIT corpus. Experimental results demonstrate that the proposed network achieves consistently better performance in both PESQ and STOI scores than two advanced time domain-based baselines in different conditions. The code is provided at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2003.09815

PDF

https://arxiv.org/pdf/2003.09815.pdf


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