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Robust pose normalization for face recognition under varying views

机译:稳健的姿势归一化以适应不同视角下的人脸识别

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Unconstrained face recognition under varying views is one of the most challenging tasks, since the difference in appearances caused by poses may be even larger than that due to identity. In this paper, we exploit and analyze a novel pose normalization scheme for facial images under varying views via robust 3D shape reconstruction from single, unconstrained photos in the wild. Specifically, to address the problem of ambiguous 2D-to-3D landmark correspondence and imperfect landmark detector, for each input 2D face, the 3D shape is suggested to be learned by iteratively refining the 3D landmarks and the weighting coefficients of each landmark. Experimental results on both LFW and a large-scale self-collected face databases demonstrate that the proposed approach performs better than the existing representative technologies.
机译:在不同视角下不受约束的面部识别是最具挑战性的任务之一,因为由姿势引起的外观差异可能甚至大于由于身份引起的外观差异。在本文中,我们通过从野外单张不受约束的照片进行鲁棒的3D形状重建,利用并分析了一种新颖的姿势图像归一化方案,用于不同视角下的人脸图像。具体地,为了解决2D到3D界标对应性不明确和界标检测器不完善的问题,对于每个输入的2D面部,建议通过迭代地细化3D界标和每个界标的加权系数来学习3D形状。在LFW和大规模自收集人脸数据库上的实验结果表明,所提出的方法比现有的代表性技术具有更好的性能。

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