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VisualVoice: Audio-Visual Speech Separation with Cross-Modal Consistency

About

We introduce a new approach for audio-visual speech separation. Given a video, the goal is to extract the speech associated with a face in spite of simultaneous background sounds and/or other human speakers. Whereas existing methods focus on learning the alignment between the speaker's lip movements and the sounds they generate, we propose to leverage the speaker's face appearance as an additional prior to isolate the corresponding vocal qualities they are likely to produce. Our approach jointly learns audio-visual speech separation and cross-modal speaker embeddings from unlabeled video. It yields state-of-the-art results on five benchmark datasets for audio-visual speech separation and enhancement, and generalizes well to challenging real-world videos of diverse scenarios. Our video results and code: http://vision.cs.utexas.edu/projects/VisualVoice/.

Ruohan Gao, Kristen Grauman• 2021

Related benchmarks

TaskDatasetResultRank
Audio-visual speech separationLRS2-2Mix (test)
SI-SNRi11.8
33
Audio-visual speech separationLRS3 (test)
SDRi10.3
20
Automatic Speech RecognitionLRS2-2Mix (test)
WER34.45
18
Cross-modal verificationVoxCeleb1 (Unseen-Unheard)
AUC74.2
13
Speech SeparationVoxCeleb2-2Mix (test)
SDRi10.2
12
Audio-visual speech separationLRS2-2Mix
SDRi11.8
12
Speech SeparationLRS3-2Mix (test)
SDRi10.3
11
Cross-modal verificationVoxCeleb1 (Seen-Heard)
AUC0.849
9
Audio-Visual Speaker SeparationLRS3-2Mix (test)
SI-SNRi9.9
8
Speaker SeparationLRS2 synthetic (test)
SDR10.8
7
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Other info

Code

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