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Label Distribution Learning on Auxiliary Label Space Graphs for Facial Expression Recognition

Shikai Chen‚ Jianfeng Wang‚ Yuedong Chen‚ Zhongchao Shi‚ Xin Geng and Yong Rui

Abstract

Many existing studies reveal that annotation inconsistency widely exists among a variety of facial expression recognition (FER) datasets. The reason might be the subjectivity of human annotators and the ambiguous nature of the expression labels. One promising strategy tackling such a problem is a recently proposed learning paradigm called Label Distribution Learning (LDL), which allows multiple labels with different intensity to be linked to one expression. However, it is often impractical to directly apply label distribution learning because numerous existing datasets only contain one-hot labels rather than label distributions. To solve the problem, we propose a novel approach named Label Distribution Learning on Auxiliary Label Space Graphs(LDL-ALSG) that leverages the topological information of the labels from related but more distinct tasks, such as action unit recognition and facial landmark detection. The underlying assumption is that facial images should have similar expression distributions to their neighbours in the label space of action unit recognition and facial landmark detection. Our proposed method is evaluated on a variety of datasets and outperforms those state-of-the-art methods consistently with a huge margin.

Book Title
Proceedings of the 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition‚ CVPR 2020‚ Virtual‚ June 14–19‚ 2020
Month
June
Year
2020