μ-law SGAN for generating spectra with more details in speech enhancement.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

The goal of monaural speech enhancement is to separate clean speech from noisy speech. Recently, many studies have employed generative adversarial networks (GAN) to deal with monaural speech enhancement tasks. When using generative adversarial networks for this task, the output of the generator is a speech waveform or a spectrum, such as a magnitude spectrum, a mel-spectrum or a complex-valued spectrum. The spectra generated by current speech enhancement methods in the time-frequency domain usually lack details, such as consonants and harmonics with low energy. In this paper, we propose a new type of adversarial training framework for spectrum generation, named μ-law spectrum generative adversarial networks (μ-law SGAN). We introduce a trainable μ-law spectrum compression layer (USCL) into the proposed discriminator to compress the dynamic range of the spectrum. As a result, the compressed spectrum can display more detailed information. In addition, we use the spectrum transformed by USCL to regularize the generator's training, so that the generator can pay more attention to the details of the spectrum. Experimental results on the open dataset Voice Bank + DEMAND show that μ-law SGAN is an effective generative adversarial architecture for speech enhancement. Moreover, visual spectrogram analysis suggests that μ-law SGAN pays more attention to the enhancement of low energy harmonics and consonants.

Authors

  • Hongfeng Li
    School of Information Science and Technology, Beijing Forestry University, 35 Qing-Hua East Road, Beijing 100083, China; Engineering Research Center for Forestry-oriented Intelligent Information Processing of National Forestry and Grassland Administration, Beijing 100083, China. Electronic address: lihongfeng@bjfu.edu.cn.
  • Yanyan Xu
    School of Information Science and Technology, Beijing Forestry University, No. 35 Qinghuadong Road, Haidian District, Beijing 100083, China.
  • Dengfeng Ke
    Institute of Automation, Chinese Academy of Sciences, No. 95 Zhongguancundong Road, Haidian District, Beijing 100190, China.
  • Kaile Su
    College of Mathematics Physics and Information Engineering, Zhejiang Normal University, No. 688 Yingbin Road, Jinhua 321004, China.