Computer ScienceProceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Robust Emotion Recognition in Context Debiasing
D. Yang, K. Yang, et al.
This research, conducted by Dingkang Yang, Kun Yang, Mingcheng Li, Shunli Wang, Shuaibing Wang, and Lihua Zhang, introduces CLEF — a counterfactual emotion inference framework for context-aware emotion recognition. By using a causal graph and a non-invasive context branch to remove direct context effects via factual vs. counterfactual comparisons, CLEF mitigates context bias and yields robust, model-agnostic performance gains.
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