SEMI-SUPERVISED CONTRASTIVE LEARNING WITH SOFT MASK ATTENTION FOR FACIAL ACTION UNIT DETECTION
Zhongling Liu (Fujitsu Research and Development Center); Rujie Liu (Fujitsu Research & Development Center Co., Ltd.); Ziqiang Shi (Fujitsu Research & Development Center); Liu Liu (Fujitsu Research & Development Center); Xiaoyu Mi (Fujitsu Laboratories Ltd.); Kentaro Murase (Fujitsu Laboratories Ltd.)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
This paper presents a novel facial action unit (AU) detection
method by simultaneously improving AU feature’s discriminative ability and alleviating the AU data scarcity problem.
We design a supervised AU soft mask attention scheme to
learn local AU features by integrating prior expert knowledge.
To further improve the discriminativeness of AU features,
contrastive learning is introduced in both instance-level and
prototype-level for each AU. For the data scarcity problem,
prototypical pseudo label assignment method is proposed in
order to make the potential of unlabeled data, where pseudo labels are assigned to unlabeled data based on the prototypes
of each AU. Overall, our semi-supervised contrastive learning
approach employs region learning, contrastive learning and
pseudo labeling jointly to enhance the discriminativeness of
AU features in the feature space and improve the generalization ability of the model. The effectiveness of the proposed
method has been verified by the experiments on benchmark
datasets BP4D and DISFA, achieving the state-of-the-art
F1-scores of 64.1% and 64.2% respectively.