Deep Features for Recognizing Disguised Faces in the Wild

Ankan Bansal, Rajeev Ranjan, C. Castillo, R. Chellappa
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引用次数: 36

Abstract

Unconstrained face verification is a challenging problem owing to variations in pose, illumination, resolution of image, age, etc. This problem becomes even more complex when the subjects are actively trying to deceive face verification systems by wearing a disguise. The problem under consideration here is to identify a subject under disguises and reject impostors trying to look like the subject of interest. In this paper we present a DCNN-based approach for recognizing people under disguises and picking out impostors. We train two different networks on a large dataset comprising of still images and video frames with L2-softmax loss. We fuse features obtained from the two networks and show that the resulting features are effective for discriminating between disguised faces and impostors in the wild. We present results on the recently introduced Disguised Faces in the Wild challenge dataset.
野外伪装人脸识别的深度特征
由于姿态、光照、图像分辨率、年龄等因素的变化,无约束人脸验证是一个具有挑战性的问题。当受试者试图通过伪装来欺骗人脸验证系统时,这个问题就变得更加复杂了。这里考虑的问题是识别伪装下的主体,并拒绝试图看起来像感兴趣的主体的骗子。在本文中,我们提出了一种基于dcnn的方法来识别伪装下的人并挑选冒名顶替者。我们在包含L2-softmax损失的静态图像和视频帧的大型数据集上训练两个不同的网络。我们融合了从两个网络中获得的特征,并表明所得到的特征可以有效地区分伪装的人脸和野外的冒名顶替者。我们展示了在Wild挑战数据集中最近引入的伪装面孔的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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