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LA-VocE: Low-SNR Audio-visual Speech Enhancement using Neural Vocoders

Authors :
Mira, Rodrigo
Xu, Buye
Donley, Jacob
Kumar, Anurag
Petridis, Stavros
Ithapu, Vamsi Krishna
Pantic, Maja
Publication Year :
2022

Abstract

Audio-visual speech enhancement aims to extract clean speech from a noisy environment by leveraging not only the audio itself but also the target speaker's lip movements. This approach has been shown to yield improvements over audio-only speech enhancement, particularly for the removal of interfering speech. Despite recent advances in speech synthesis, most audio-visual approaches continue to use spectral mapping/masking to reproduce the clean audio, often resulting in visual backbones added to existing speech enhancement architectures. In this work, we propose LA-VocE, a new two-stage approach that predicts mel-spectrograms from noisy audio-visual speech via a transformer-based architecture, and then converts them into waveform audio using a neural vocoder (HiFi-GAN). We train and evaluate our framework on thousands of speakers and 11+ different languages, and study our model's ability to adapt to different levels of background noise and speech interference. Our experiments show that LA-VocE outperforms existing methods according to multiple metrics, particularly under very noisy scenarios.<br />Comment: accepted to ICASSP 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.10999
Document Type :
Working Paper