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arxiv:2404.10667

VASA-1: Lifelike Audio-Driven Talking Faces Generated in Real Time

Published on Apr 16
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Abstract

We introduce VASA, a framework for generating lifelike talking faces with appealing visual affective skills (VAS) given a single static image and a speech audio clip. Our premiere model, VASA-1, is capable of not only producing lip movements that are exquisitely synchronized with the audio, but also capturing a large spectrum of facial nuances and natural head motions that contribute to the perception of authenticity and liveliness. The core innovations include a holistic facial dynamics and head movement generation model that works in a face latent space, and the development of such an expressive and disentangled face latent space using videos. Through extensive experiments including evaluation on a set of new metrics, we show that our method significantly outperforms previous methods along various dimensions comprehensively. Our method not only delivers high video quality with realistic facial and head dynamics but also supports the online generation of 512x512 videos at up to 40 FPS with negligible starting latency. It paves the way for real-time engagements with lifelike avatars that emulate human conversational behaviors.

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Hi, Great work there. Really liked it.

I wanna know, will this model be hugging-face or not? Or it is closed source models?

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@sanjeev-bhandari01 They state on their project page that "This is only a research demonstration and there's no product or API release plan"
The guys want to keep the secret sauce secret. This model is #1 for me in terms of quality #2 SyncTalk is a close second, #3 MoDi has a good license and is open for now

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