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Facial Chirality: Using Self-Face Reflection to Learn Discriminative Features for Facial Expression Recognition

机译:面部手平性:利用自我反射来学习面部表情识别的鉴别特征

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As a fundamental vision task, facial expression recognition has made substantial progress recently. However, the recognition performance often degrades largely in real-world scenarios due to the lack of robust facial features. In this paper, we propose a simple but effective facial feature learning method that takes the advantage of facial chirality to discover the discriminative features for facial expression recognition. Most previous studies implicitly assume that human faces are symmetric. However, our work reveals that the facial asymmetric effect can be a crucial clue. Given a face image and its reflection without additional labels, we decouple the reflection-invariant facial features from the input image pair and then demonstrate that the new features with a standard and lightweight learning model (e.g. ResNet-18) are sufficiently robust to outperform the state-of-the-art methods (e.g. SCN in CVPR 2020 and ESRs in AAAI 2020). Our experiments also show the potential of the new features for other facial vision tasks such as expression image retrieval.
机译:作为一个基本愿景任务,面部表情识别最近取得了很大的进展。然而,由于缺乏强肥大的面部特征,识别性能通常在很大程度上在很大程度上降低。在本文中,我们提出了一种简单但有效的面部特征学习方法,其利用面部手性能来发现面部表情识别的鉴别特征。以前的最先前的研究隐含地假设人脸是对称的。然而,我们的工作表明,面部不对称效果可以是至关重要的线索。给定没有额外标签的面部图像及其反射,我们将反射不变的面部特征从输入图像对中解耦,然后表明具有标准和轻量级学习模型(例如Resnet-18)的新功能足以强大地胜过最先进的方法(例如,CVPR 2020中的SCN和AAAI 2020中的ESR)。我们的实验还显示了其他面部视觉任务的新功能的潜力,例如表达图像检索。

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