PerReactor: Offline Personalised Multiple Appropriate Facial Reaction Generation

Authors

  • Hengde Zhu University of Leicester
  • Xiangyu Kong University of Exeter Affect AI, Anhui, China
  • Weicheng Xie Shenzhen University
  • Xin Huang South China Normal University
  • Xilin He Shenzhen University
  • Lu Liu University of Exeter
  • Linlin Shen Shenzhen University
  • Wei Zhang Zhejiang University Affect AI, Anhui, China
  • Hatice Gunes University of Cambridge
  • Siyang Song University of Exeter

DOI:

https://doi.org/10.1609/aaai.v39i2.32159

Abstract

In dyadic human-human interactions, individuals may express multiple different facial reactions in response to the same/similar behaviours expressed by their conversational partners depending on their personalised behaviour patterns. As a result, frequently-employed reconstruction loss-based strategies lead the training of previous automatic facial reaction generation (FRG) models to not only suffer from the 'one-to-many mapping' problem, but also fail to comprehensively consider the quality of the generated facial reactions. Besides, none of them considered such personalised behaviour patterns in generating facial reactions. In this paper, we propose the first adversarial FRG model training strategy which jointly learns appropriateness and realism discriminators to provide comprehensive task-specific supervision for training the target facial reaction generators, and reformulates the 'one-to-many (facial reactions) mapping' training problem as a 'one-to-one (distribution) mapping' training task, i.e., the FRG model is trained to output a distribution representing multiple appropriate/plausible facial reaction from each input human behaviour. In addition, our approach also serves as the first offline FRG approach that considers personalised behaviour patterns in generating of target individuals' facial reactions. Experiments show that our PerReactor not only largely outperformed all existing offline solutions for generating more appropriate, diverse and realistic facial reactions, but also is the first approach that can effectively generate personalised appropriate facial reactions.

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Published

2025-04-11

How to Cite

Zhu, H., Kong, X., Xie, W., Huang, X., He, X., Liu, L., … Song, S. (2025). PerReactor: Offline Personalised Multiple Appropriate Facial Reaction Generation. Proceedings of the AAAI Conference on Artificial Intelligence, 39(2), 1665–1673. https://doi.org/10.1609/aaai.v39i2.32159

Issue

Section

AAAI Technical Track on Cognitive Modeling & Cognitive Systems