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Weakly-Supervised Text-driven Contrastive Learning for Facial Behavior Understanding

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arxiv 2304.00058 v2 pith:IPMNDD4S submitted 2023-03-31 cs.CV

Weakly-Supervised Text-driven Contrastive Learning for Facial Behavior Understanding

classification cs.CV
keywords faciallearningcontrastivedatasetsbehaviorinformationpairsrecognition
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Contrastive learning has shown promising potential for learning robust representations by utilizing unlabeled data. However, constructing effective positive-negative pairs for contrastive learning on facial behavior datasets remains challenging. This is because such pairs inevitably encode the subject-ID information, and the randomly constructed pairs may push similar facial images away due to the limited number of subjects in facial behavior datasets. To address this issue, we propose to utilize activity descriptions, coarse-grained information provided in some datasets, which can provide high-level semantic information about the image sequences but is often neglected in previous studies. More specifically, we introduce a two-stage Contrastive Learning with Text-Embeded framework for Facial behavior understanding (CLEF). The first stage is a weakly-supervised contrastive learning method that learns representations from positive-negative pairs constructed using coarse-grained activity information. The second stage aims to train the recognition of facial expressions or facial action units by maximizing the similarity between image and the corresponding text label names. The proposed CLEF achieves state-of-the-art performance on three in-the-lab datasets for AU recognition and three in-the-wild datasets for facial expression recognition.

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