CVIRSDASApr 5, 2022

VocaLiST: An Audio-Visual Synchronisation Model for Lips and Voices

arXiv:2204.02090v20.2531 citationsh-index: 22
AI Analysis55

It addresses synchronization for speech and singing videos, which is incremental as it builds on existing methods with new applications.

The paper tackles lip-voice synchronization in videos, proposing a cross-modal transformer model that outperforms baselines on the LRS2 dataset and extends to singing voice, using learned features to improve singing voice separation.

In this paper, we address the problem of lip-voice synchronisation in videos containing human face and voice. Our approach is based on determining if the lips motion and the voice in a video are synchronised or not, depending on their audio-visual correspondence score. We propose an audio-visual cross-modal transformer-based model that outperforms several baseline models in the audio-visual synchronisation task on the standard lip-reading speech benchmark dataset LRS2. While the existing methods focus mainly on lip synchronisation in speech videos, we also consider the special case of the singing voice. The singing voice is a more challenging use case for synchronisation due to sustained vowel sounds. We also investigate the relevance of lip synchronisation models trained on speech datasets in the context of singing voice. Finally, we use the frozen visual features learned by our lip synchronisation model in the singing voice separation task to outperform a baseline audio-visual model which was trained end-to-end. The demos, source code, and the pre-trained models are available on https://ipcv.github.io/VocaLiST/

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