IdenNet: Identity-Aware Facial Action Unit Detection

2019 14th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2019)(2019)

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摘要
Facial Action Unit (AU) detection is an important task to enable the emotion recognition from facial movements. In this paper, we propose a novel algorithm which utilizes identity-labeled face images to tackle the identity-based intra-class variation of AU detection that the appearances of the same AU vary significantly among different subjects, which makes existing methods generate low performance under cross-domain scenarios in case that the training and test datasets are dissimilar. The proposed method is based on network cascades consisting of two sub-tasks, face clustering and AU detection. The face clustering network, trained from a large dataset containing numerous identity-annotated face images, is designed to learn a transformation to extract identity-dependent image features, which are used to predict AU labels in the second network. The cascades are jointly trained by AU- and identity-annotated datasets that contain numerous subjects to improve the method's applicability. Experimental results show that the proposed method achieves state-of-the-art AU detection performance on benchmark datasets BP4D, UNBC-McMaster, and DISFA.
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关键词
cross-domain scenarios,test datasets,face clustering network,identity-dependent image features,AU labels,identity-annotated datasets,emotion recognition,facial movements,identity-labeled face images,AU detection,identity-based intraclass variation,identity-aware facial action unit detection,identity-annotated face images,training datasets
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