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Adaptive Temporal Motion Guided Graph Convolution Network for Micro-expression Recognition

About

Micro-expressions serve as essential cues for understanding individuals' genuine emotional states. Recognizing micro-expressions attracts increasing research attention due to its various applications in fields such as business negotiation and psychotherapy. However, the intricate and transient nature of micro-expressions poses a significant challenge to their accurate recognition. Most existing works either neglect temporal dependencies or suffer from redundancy issues in clip-level recognition. In this work, we propose a novel framework for micro-expression recognition, named the Adaptive Temporal Motion Guided Graph Convolution Network (ATM-GCN). Our framework excels at capturing temporal dependencies between frames across the entire clip, thereby enhancing micro-expression recognition at the clip level. Specifically, the integration of Adaptive Temporal Motion layers empowers our method to aggregate global and local motion features inherent in micro-expressions. Experimental results demonstrate that ATM-GCN not only surpasses existing state-of-the-art methods, particularly on the Composite dataset, but also achieves superior performance on the latest micro-expression dataset CAS(ME)$^3$.

Fengyuan Zhang, Zhaopei Huang, Xinjie Zhang, Qin Jin• 2024

Related benchmarks

TaskDatasetResultRank
Micro-expression recognitionCASME II 3-class
Accuracy90.42
17
7-class micro-expression recognitionCAS(ME)3
UAR42.83
15
Micro-expression recognitionSAMM 3-class
Accuracy79.2
15
4-class micro-expression recognitionCAS(ME)3
UF154.23
13
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