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Task Specific Networks for Identity and Face Variation

机译:用于身份和面部变化的任务特定网络

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摘要

Pose and illumination variations are considered as two main challenges that face recognition system encounters. Most existing methods perform face normalization, aiming at untangling identity representation from these variations to improve recognition accuracy. Taking into account face variation representations, this paper proposes Task Specific Networks for the two representations with two novelties. First, we rotate and normalize face image to multi-pose view for one subtask, and learn face variation representations for another. Second, we learn face variation representations in an unsupervised way, which is more robust and more universal. We couple these two representations in the part of reconstructing the original face, where the two representations effect and restrict each other. Extensive experiments demonstrate the superiority of our method in both learning representations and rotating non-frontal face image.
机译:姿势和光照变化被认为是面部识别系统遇到的两个主要挑战。大多数现有方法都执行人脸标准化,旨在从这些变化中解开身份表示,以提高识别准确性。考虑到面部变化表示,本文针对两种表示提出了具有两个新颖性的任务专用网络。首先,我们将人脸图像旋转并归一化为一个子任务的多姿势视图,然后为另一个子任务学习人脸变化表示。其次,我们以无人监督的方式学习人脸变化表示,这种方法更健壮,更通用。我们在重建原始脸部的过程中将这两种表示形式耦合在一起,这两种表示形式相互影响并相互制约。大量实验证明了我们的方法在学习表示和旋转非正面人脸图像方面的优越性。

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