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Cross-Modal Representation Learning for Lightweight and Accurate Facial Action Unit Detection

Ying-Jie Chen, Han Wu, Tao Wang, Yizhou Wang, Yun Liang

发表年份
2021
引用次数
9

摘要

In this letter, we focus on designing an effective method for lightweight and accurate facial action unit (AU) detection, which is essential for emotional communication in most human-robot interaction scenarios. AU detection is a delicate and challenging task because the subtle fleeting appearance changes caused by AUs are very difficult to catch and express. Therefore existing approaches mainly deal with static facial states or frame-level temporal relationships. The dynamic process of facial muscle movement, as the core feature of AU, is yet ignored and rarely exploited by prior studies. Based on such observation, we propose Flow Supervised Module (FSM) to explicitly capture the dynamic facial movement in the form of Flow and use the learned Flow to provide supervision signals for the detection model during the training stage effectively and efficiently. Furthermore, the proposed FSM can be easily incorporated into various backbone networks and boost their performance. Extensive experiments are conducted on two benchmark datasets, DISFA and BP4D, showing state-of-the-art performance with competitive detection speed.

关键词

Computer scienceBenchmark (surveying)Artificial intelligenceProcess (computing)Feature (linguistics)Representation (politics)Task (project management)Action (physics)Focus (optics)Facial expression

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