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SVFAP: Self-supervised Video Facial Affect Perceiver

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Video-based facial affect analysis has recently attracted increasing attention owing to its critical role in human-computer interaction. Previous studies mainly focus on developing various deep learning architectures and training them in a fully supervised manner. Although significant progress has been achieved by these supervised methods, the longstanding lack of large-scale high-quality labeled data severely hinders their further improvements. Motivated by the recent success of self-supervised learning in computer vision, this paper introduces a self-supervised approach, termed Self-supervised Video Facial Affect Perceiver (SVFAP), to address the dilemma faced by supervised methods. Specifically, SVFAP leverages masked facial video autoencoding to perform self-supervised pre-training on massive unlabeled facial videos. Considering that large spatiotemporal redundancy exists in facial videos, we propose a novel temporal pyramid and spatial bottleneck Transformer as the encoder of SVFAP, which not only largely reduces computational costs but also achieves excellent performance. To verify the effectiveness of our method, we conduct experiments on nine datasets spanning three downstream tasks, including dynamic facial expression recognition, dimensional emotion recognition, and personality recognition. Comprehensive results demonstrate that SVFAP can learn powerful affect-related representations via large-scale self-supervised pre-training and it significantly outperforms previous state-of-the-art methods on all datasets. Code is available at https://github.com/sunlicai/SVFAP.

Licai Sun, Zheng Lian, Kexin Wang, Yu He, Mingyu Xu, Haiyang Sun, Bin Liu, Jianhua Tao• 2023

Related benchmarks

TaskDatasetResultRank
Categorical Emotion RecognitionMAFW 11-class
UAR0.4119
23
Categorical Emotion RecognitionCREMA-D
UAR77.31
14
Dynamic Facial Expression RecognitionRAVDESS 7-class
WAR75.01
8
Dynamic Facial Expression RecognitionCREMA-D 6-class (test)
WAR77.37
8
Dynamic Facial Expression RecognitionMEAD 8-class
WAR80.23
8
Facial Emotion RecognitionRAVDESS
WAR75.01
8
Dimensional Emotion RecognitionWerewolf-XL
Arousal23.51
5
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