DEEPTalk: Dynamic Emotion Embedding for Probabilistic Speech-Driven 3D Face Animation

Authors

  • Jisoo Kim Yonsei University
  • Jungbin Cho Yonsei University
  • Joonho Park GIANTSTEP Inc.
  • Soonmin Hwang Yonsei University
  • Da Eun Kim GIANTSTEP Inc.
  • Geon Kim GIANTSTEP Inc.
  • Youngjae Yu Yonsei University

DOI:

https://doi.org/10.1609/aaai.v39i4.32449

Abstract

Speech-driven 3D facial animation has garnered lots of attention thanks to its broad range of applications. Despite recent advancements in achieving realistic lip motion, current methods fail to capture the nuanced emotional undertones conveyed through speech and produce monotonous facial motion. These limitations result in blunt and repetitive facial animations, reducing user engagement and hindering their applicability. To address these challenges, we introduce DEEPTalk, a novel approach that generates diverse and emotionally rich 3D facial expressions directly from speech inputs. To achieve this, we first train DEE (Dynamic Emotion Embedding), which employs probabilistic contrastive learning to forge a joint emotion embedding space for both speech and facial motion. This probabilistic framework captures the uncertainty in interpreting emotions from speech and facial motion, enabling the derivation of emotion vectors from its multifaceted space. Moreover, to generate dynamic facial motion, we design TH-VQVAE (Temporally Hierarchical VQ-VAE) as an expressive and robust motion prior overcoming limitations of VAEs and VQ-VAEs. Utilizing these strong priors, we develop DEEPTalk, a talking head generator that non-autoregressively predicts codebook indices to create dynamic facial motion, incorporating a novel emotion consistency loss. Extensive experiments on various datasets demonstrate the effectiveness of our approach in creating diverse, emotionally expressive talking faces that maintain accurate lip-sync. Our project page is available at https://whwjdqls.github.io/deeptalk.github.io/.

Published

2025-04-11

How to Cite

Kim, J., Cho, J., Park, J., Hwang, S., Kim, D. E., Kim, G., & Yu, Y. (2025). DEEPTalk: Dynamic Emotion Embedding for Probabilistic Speech-Driven 3D Face Animation. Proceedings of the AAAI Conference on Artificial Intelligence, 39(4), 4275–4283. https://doi.org/10.1609/aaai.v39i4.32449

Issue

Section

AAAI Technical Track on Computer Vision III