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Occlusion Robust Face Recognition Based on Mask Learning With Pairwise Differential Siamese Network

机译:基于面罩学习的成对差分暹罗网络遮挡鲁棒人脸识别

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Deep Convolutional Neural Networks (CNNs) have been pushing the frontier of face recognition over past years. However, existing CNN models are far less accurate when handling partially occluded faces. These general face models generalize poorly for occlusions on variable facial areas. Inspired by the fact that human visual system explicitly ignores the occlusion and only focuses on the non-occluded facial areas, we propose a mask learning strategy to find and discard corrupted feature elements from recognition. A mask dictionary is firstly established by exploiting the differences between the top conv features of occluded and occlusion-free face pairs using innovatively designed pairwise differential siamese network (PDSN). Each item of this dictionary captures the correspondence between occluded facial areas and corrupted feature elements, which is named Feature Discarding Mask (FDM). When dealing with a face image with random partial occlusions, we generate its FDM by combining relevant dictionary items and then multiply it with the original features to eliminate those corrupted feature elements from recognition. Comprehensive experiments on both synthesized and realistic occluded face datasets show that the proposed algorithm significantly outperforms the state-of-the-art systems.
机译:过去几年,深度卷积神经网络(CNN)一直在推动人脸识别的前沿。但是,当处理部分遮挡的脸部时,现有的CNN模型的精确度要差得多。这些通用的面部模型对可变面部区域上的遮挡的概括性很差。受人类视觉系统明确忽略遮挡而只关注未遮挡的面部区域这一事实的启发,我们提出了一种遮罩学习策略,以从识别中查找和丢弃损坏的特征元素。首先使用创新设计的成对差分暹罗网络(PDSN),通过利用遮挡和无遮挡脸对的顶级平移特征之间的差异来建立遮罩字典。该词典的每个项目都捕获了被遮挡的面部区域和损坏的特征元素之间的对应关系,称为“特征丢弃遮罩(FDM)”。当处理具有随机局部遮挡的脸部图像时,我们通过组合相关的字典项来生成其FDM,然后将其与原始特征相乘以从识别中消除那些损坏的特征元素。对合成和逼真的遮挡人脸数据集进行的综合实验表明,所提出的算法明显优于最新的系统。

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