Learning Spatial-Semantic Relationship for Facial Attribute Recognition with Limited Labeled Data

Y. Shu, Yan Yan, Si Chen, Jing-Hao Xue, Chunhua Shen, Hanzi Wang
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引用次数: 19

Abstract

Recent advances in deep learning have demonstrated excellent results for Facial Attribute Recognition (FAR), typically trained with large-scale labeled data. However, in many real-world FAR applications, only limited labeled data are available, leading to remarkable deterioration in performance for most existing deep learning-based FAR methods. To address this problem, here we propose a method termed Spatial-Semantic Patch Learning (SSPL). The training of SSPL involves two stages. First, three auxiliary tasks, consisting of a Patch Rotation Task (PRT), a Patch Segmentation Task (PST), and a Patch Classification Task (PCT), are jointly developed to learn the spatial-semantic relationship from large-scale unlabeled facial data. We thus obtain a powerful pre-trained model. In particular, PRT exploits the spatial information of facial images in a self-supervised learning manner. PST and PCT respectively capture the pixel-level and image-level semantic information of facial images based on a facial parsing model. Second, the spatial-semantic knowledge learned from auxiliary tasks is transferred to the FAR task. By doing so, it enables that only a limited number of labeled data are required to fine-tune the pre-trained model. We achieve superior performance compared with state-of-the-art methods, as substantiated by extensive experiments and studies.
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有限标记数据下人脸属性识别的空间语义关系学习
深度学习的最新进展已经证明了面部属性识别(FAR)的出色效果,通常使用大规模标记数据进行训练。然而,在许多真实的FAR应用中,只有有限的标记数据可用,导致大多数现有的基于深度学习的FAR方法的性能显著下降。为了解决这个问题,我们提出了一种称为空间语义补丁学习(SSPL)的方法。SSPL的训练包括两个阶段。首先,联合开发斑块旋转任务(PRT)、斑块分割任务(PST)和斑块分类任务(PCT)三个辅助任务,从大规模未标记的面部数据中学习空间语义关系;因此,我们得到了一个强大的预训练模型。特别是,PRT以一种自监督学习的方式利用了面部图像的空间信息。基于人脸解析模型,PST和PCT分别捕获人脸图像的像素级和图像级语义信息。其次,将从辅助任务中学到的空间语义知识转移到FAR任务中。通过这样做,它可以只需要有限数量的标记数据来微调预训练的模型。与最先进的方法相比,我们实现了卓越的性能,这一点得到了广泛的实验和研究的证实。
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