VoViT: low latency graph-based audio-visual voice separation transformer
VoViT: low latency graph-based audio-visual voice separation transformer
Citació
- Montesinos JF, Kadandale VS, Haro G. VoViT: low latency graph-based audio-visual voice separation transformer. In: Avidan S, Brostow G, Cissé M, Maria Farinella G, Hassner T, editors. 17th European Conference on Computer Vision Part XVIII (ECCV 2022); 2022 October 23-7; Tel Aviv, Israel. Cham: Springer Verlag; 2022. p.310-26. (LNCS; no. 13678). DOI: 10.1007/978-3-031-19836-6_18
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Descripció
Resum
This paper presents an audio-visual approach for voice separation which produces state-of-the-art results at a low latency in two scenarios: speech and singing voice. The model is based on a two-stage network. Motion cues are obtained with a lightweight graph convolutional network that processes face landmarks. Then, both audio and motion features are fed to an audio-visual transformer which produces a fairly good estimation of the isolated target source. In a second stage, the predominant voice is enhanced with an audio-only network. We present different ablation studies and comparison to state-of-the-art methods. Finally, we explore the transferability of models trained for speech separation in the task of singing voice separation. The demos, code, and weights are available in https://ipcv.github.io/VoViT/.