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Research Article | Open Access

MagicTalk: Implicit and explicit correlation learning for diffusion-based emotional talking face generation

ByteDance Inc., San Jose, CA 95110, USA
University of Texas at Dallas, Richardson, TX 75080, USA
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Abstract

Generating emotional talking faces from a single portrait image remains a significant challenge. The simultaneous achievement of expressive emotional talking and accurate lip-sync is particularly difficult, as expressiveness is often compromised for lip-sync accuracy. Prevailing generative works usually struggle to juggle to generate subtle variations of emotional expression and lip-synchronized talking. To address these challenges, we suggest modeling the implicit and explicit correlations between audio and emotional talking faces with a unified framework. As human emotional expressions usually present subtle and implicit relations with speech audio, we propose incorporating audio and emotional style embeddings into the diffusion-based generation process, for realistic generation while concentrating on emotional expressions. We then propose lip-based explicit correlation learning to construct a strong mapping of audio to lip motions, assuring lip-audio synchronization. Furthermore, we deploy a video-to-video rendering module to transfer expressions and lip motions from a proxy 3D avatar to an arbitrary portrait. Both quantitatively and qualitatively, MagicTalk outperforms state-of-the-art methods in terms of expressiveness, lip-sync, and perceptual quality.

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Computational Visual Media
Pages 763-779

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Cite this article:
Zhang C, Wang C, Zhang J, et al. MagicTalk: Implicit and explicit correlation learning for diffusion-based emotional talking face generation. Computational Visual Media, 2025, 11(4): 763-779. https://doi.org/10.26599/CVM.2025.9450491

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Received: 05 February 2025
Accepted: 03 May 2025
Published: 01 October 2025
© The Author(s) 2025.

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