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FlowAVSE: Efficient Audio-Visual Speech Enhancement with Conditional Flow Matching

Authors :
Jung, Chaeyoung
Lee, Suyeon
Kim, Ji-Hoon
Chung, Joon Son
Publication Year :
2024

Abstract

This work proposes an efficient method to enhance the quality of corrupted speech signals by leveraging both acoustic and visual cues. While existing diffusion-based approaches have demonstrated remarkable quality, their applicability is limited by slow inference speeds and computational complexity. To address this issue, we present FlowAVSE which enhances the inference speed and reduces the number of learnable parameters without degrading the output quality. In particular, we employ a conditional flow matching algorithm that enables the generation of high-quality speech in a single sampling step. Moreover, we increase efficiency by optimizing the underlying U-net architecture of diffusion-based systems. Our experiments demonstrate that FlowAVSE achieves 22 times faster inference speed and reduces the model size by half while maintaining the output quality. The demo page is available at: https://cyongong.github.io/FlowAVSE.github.io/<br />Comment: INTERSPEECH 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.09286
Document Type :
Working Paper