Learning Shape-Appearance Based Attributes Representation for Facial Attribute Recognition with Limited Labeled DataDownload PDFOpen Website

2021 (modified: 16 Nov 2022)FG 2021Readers: Everyone
Abstract: The Facial Attribute Recognition (FAR) is a challenging task especially when there exists limited labeled data, which may lead the mainstream fully-supervised FAR methods to be no longer in force. To tackle this problem, we propose a novel unsupervised learning framework named Shape-Appearance Based Attributes Representation Learning (SABAL) by leveraging large-scale unlabeled face data. Considering face attributes are mainly determined by 3D shape and facial appearance, we decouple a face image into 3D shape and appearance features by two branch networks, i.e., 3D Shape Branch and Facial Appearance Branch. 3D Shape Branch and Facial Appearance Branch are jointly trained with orthogonal loss and 2D face reconstruction loss to obtain robust facial representations containing 3D-geometry and texture information, which are beneficial for attributes recognition. Finally, the unsupervised learnt features are transferred to the FAR task by fine-tuning on limited labeled data from CelebA. Extensive experiments show that we achieve comparable results to state-of-the-art methods.
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