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http://dx.doi.org/10.3837/tiis.2020.03.001

An Action Unit co-occurrence constraint 3DCNN based Action Unit recognition approach  

Jia, Xibin (Faculty of Information Technology, Department of Computer Science, Beijing University of Technology)
Li, Weiting (Faculty of Information Technology, Department of Computer Science, Beijing University of Technology)
Wang, Yuechen (Faculty of Information Technology, Department of Computer Science, Beijing University of Technology)
Hong, SungChan (Department of information science and telecom, Hanshin University)
Su, Xing (Faculty of Information Technology, Department of Computer Science, Beijing University of Technology)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.14, no.3, 2020 , pp. 924-942 More about this Journal
Abstract
The facial expression is diverse and various among persons due to the impact of the psychology factor. Whilst the facial action is comparatively steady because of the fixedness of the anatomic structure. Therefore, to improve performance of the action unit recognition will facilitate the facial expression recognition and provide profound basis for the mental state analysis, etc. However, it still a challenge job and recognition accuracy rate is limited, because the muscle movements around the face are tiny and the facial actions are not obvious accordingly. Taking account of the moving of muscles impact each other when person express their emotion, we propose to make full use of co-occurrence relationship among action units (AUs) in this paper. Considering the dynamic characteristic of AUs as well, we adopt the 3D Convolutional Neural Network(3DCNN) as base framework and proposed to recognize multiple action units around brows, nose and mouth specially contributing in the emotion expression with putting their co-occurrence relationships as constrain. The experiments have been conducted on a typical public dataset CASME and its variant CASME2 dataset. The experiment results show that our proposed AU co-occurrence constraint 3DCNN based AU recognition approach outperforms current approaches and demonstrate the effectiveness of taking use of AUs relationship in AU recognition.
Keywords
Action Unit Recognition; 3DCNN; Correlation; FACS;
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