Time Domain Audio Visual Speech Separation
Abstract
Audio-visual multi-modal modeling has been demonstrated to be effective in many speech related tasks, such as speech recognition and speech enhancement. This paper introduces a new time-domain audio-visual architecture for target speaker extraction from monaural mixtures. The architecture generalizes the previous TasNet (time-domain speech separation network) to enable multi-modal learning and at meanwhile it extends the classical audio-visual speech separation from frequency-domain to time-domain. The main components of proposed architecture include an audio encoder, a video encoder that extracts lip embedding from video streams, a multi-modal separation network and an audio decoder. Experiments on simulated mixtures based on recently released LRS2 dataset show that our method can bring 3dB+ and 4dB+ Si-SNR improvements on two- and three-speaker cases respectively, compared to audio-only TasNet and frequency-domain audio-visual networks
Cite
@article{arxiv.1904.03760,
title = {Time Domain Audio Visual Speech Separation},
author = {Jian Wu and Yong Xu and Shi-Xiong Zhang and Lian-Wu Chen and Meng Yu and Lei Xie and Dong Yu},
journal= {arXiv preprint arXiv:1904.03760},
year = {2019}
}
Comments
Accepted to ASRU 2019