论测量人脸的象似性

Prithviraj Dhar, C. Castillo, R. Chellappa
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引用次数: 9

摘要

对于人脸数据集中的给定身份,有某些标志性图像比其他图像更能代表主题。本文探讨了人脸象似性的计算问题。提出的方法的前提是:对于包含标志性和非标志性图像混合的身份,如果给定的人脸不能与任何具有相同身份的其他人脸成功匹配,则该人脸图像的像似性较低。利用这些信息,我们训练了一个Siamese多层感知器网络,这样它的每一个双胞胎都可以预测图像特征对的像似性分数,作为输入输入。我们观察了获得的分数相对于协变量(如模糊、偏航、俯pitch、roll和遮挡)的变化,以证明它们有效地预测了图像的质量,并将其与其他现有指标进行了比较。此外,我们使用这些分数对基于模板的人脸验证特征进行加权,并将其与特征的媒体平均进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Measuring the Iconicity of a Face
For a given identity in a face dataset, there are certain iconic images which are more representative of the subject than others. In this paper, we explore the problem of computing the iconicity of a face. The premise of the proposed approach is as follows: For an identity containing a mixture of iconic and non iconic images, if a given face cannot be successfully matched with any other face of the same identity, then the iconicity of the face image is low. Using this information, we train a Siamese Multi-Layer Perceptron network, such that each of its twins predict iconicity scores of the image feature pair, fed in as input. We observe the variation of the obtained scores with respect to covariates such as blur, yaw, pitch, roll and occlusion to demonstrate that they effectively predict the quality of the image and compare it with other existing metrics. Furthermore, we use these scores to weight features for template-based face verification and compare it with media averaging of features.
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