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OGCTL: Occlusion-guided compact template learning for ensemble deep network-based pose-invariant face recognition

机译:OGCTL:遮挡引导的紧凑模板学习,用于基于整体深度网络的姿势不变脸部识别

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Concatenation of the deep network representations extracted from different facial patches helps to improve face recognition performance. However, the concatenated facial template increases in size and contains redundant information. Previous solutions aim to reduce the dimensionality of the facial template without considering the occlusion pattern of the facial patches. In this paper, we propose an occlusion-guided compact template learning (OGCTL) approach that only uses the information from visible patches to construct the compact template. The compact face representation is not sensitive to the number of patches that are used to construct the facial template, and is more suitable for incorporating the information from different view angles for image-set based face recognition. Instead of using occlusion masks in face matching (e.g., DPRFS [38]), the proposed method uses occlusion masks in template construction and achieves significantly better image-set based face verification performance on a challenging database with a template size that is an order-of-magnitude smaller than DPRFS.
机译:从不同面部补丁提取的深度网络表示的串联有助于提高面部识别性能。然而,级联的面部模板的尺寸增加并且包含冗余信息。先前的解决方案旨在减小面部模板的尺寸而不考虑面部补丁的遮挡模式。在本文中,我们提出了一种遮挡引导的紧凑模板学习(OGCTL)方法,该方法仅使用可见补丁中的信息来构造紧凑模板。紧凑的脸部表示对用于构造脸部模板的贴片数量不敏感,并且更适合于从不同角度合并信息以进行基于图像集的脸部识别。代替在面部匹配中使用遮挡遮罩(例如DPRFS [38]),提出的方法在模板构造中使用遮挡遮罩,并且在具有挑战性的数据库(模板大小为阶次)上实现了基于图像集的面部验证性能显着提高。幅度小于DPRFS。

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