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Similarity metric learning for face verification using sigmoid decision function

机译:使用S形决策函数的人脸验证相似度学习

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In this paper, we consider the face verification problem, which is to determine whether two face images belong to the same subject or not. Although many research efforts have been focused on this problem, it still remains a challenging problem due to large intra-personal variations in imaging conditions, such as illumination, pose, expression, and occlusion. Our proposed method is based on the idea that we would like the similarity between positive pairs larger than negative pairs, and obtain a similarity estimation of two images. We construct our decision function by incorporating bilinear similarity and Mahalanobis distance to the sigmoid function. The constructed decision function makes our method discriminative for inter-personal differences and invariant to intra-personal variations such as pose/lighting/expression. What is more, our formulated objective function is convex, which guarantees global minimum. Our method belongs to nonlinear metric which is more robust to handle heterogeneous data than linear metric. We evaluate our proposed verification method on the challenging labeled faces in the wild (LFW) database. Experimental results demonstrate that the proposed method outperforms state-of-the-art methods such as Joint Bayesian under the unrestricted setting of LFW.
机译:在本文中,我们考虑了面部验证问题,即确定两个面部图像是否属于同一主题。尽管许多研究工作都集中在这个问题上,但是由于成像条件(例如照明,姿势,表情和遮挡)的较大的个人内部变化,它仍然是一个具有挑战性的问题。我们提出的方法基于这样的想法,即我们希望大于负对的正对之间的相似度,并获得两个图像的相似度估计。我们通过将双线性相似度和马氏距离结合到S形函数来构造决策函数。构造的决策函数使我们的方法可以区分人际差异,而对于人际差异(如姿势/灯光/表情)则是不变的。而且,我们制定的目标函数是凸的,可以保证全局最小值。我们的方法属于非线性度量,它比线性度量更健壮地处理异构数据。我们评估在野生(LFW)数据库中具有挑战性的带有标签的面孔上提出的验证方法。实验结果表明,在无限制的LFW设置下,所提出的方法优于诸如联合贝叶斯方法的最新方法。

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