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Causal Intervention for Subject-Deconfounded Facial Action Unit Recognition

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Subject-invariant facial action unit (AU) recognition remains challenging for the reason that the data distribution varies among subjects. In this paper, we propose a causal inference framework for subject-invariant facial action unit recognition. To illustrate the causal effect existing in AU recognition task, we formulate the causalities among facial images, subjects, latent AU semantic relations, and estimated AU occurrence probabilities via a structural causal model. By constructing such a causal diagram, we clarify the causal effect among variables and propose a plug-in causal intervention module, CIS, to deconfound the confounder \emph{Subject} in the causal diagram. Extensive experiments conducted on two commonly used AU benchmark datasets, BP4D and DISFA, show the effectiveness of our CIS, and the model with CIS inserted, CISNet, has achieved state-of-the-art performance.

Yingjie Chen, Diqi Chen, Tao Wang, Yizhou Wang, Yun Liang• 2022

Related benchmarks

TaskDatasetResultRank
Facial Action Unit DetectionDISFA
F1 (AU 1)48.8
47
Action Unit DetectionBP4D
Average F1 Score64.3
43
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