Face Recognition Challenge: Object Recognition Approaches for Human/Avatar Classification

T. Yamasaki, Tsuhan Chen
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引用次数: 5

Abstract

Recently, a novel "completely automated public Turing test to tell computers and humans apart (CAPTCHA)'' system has been proposed, in which users are asked to separate natural faces of humans and artificial faces of virtual world avatars. The system is based on the assumption that computers cannot separate them while it is an easy task for humans. Conventional digital forensics approaches to distinguish natural images from computer graphics images are mostly based on statistical analysis of the images such as noise in CMOS image sensors or Bayer matrix estimation. On the other hand, this paper uses face recognition and object classification based approaches. The experiments show that our approaches work surprisingly well and yields more than 99\% accuracy. Our object classification based approach can also tell us how likely the input images are regarded as human/avatar faces.
人脸识别挑战:人类/化身分类的对象识别方法
最近,有人提出了一种新颖的“完全自动化的公共图灵测试来区分计算机和人类(CAPTCHA)”系统,该系统要求用户区分人类的自然面孔和虚拟世界avatar的人造面孔。该系统是基于这样的假设:计算机无法将它们分开,而这对人类来说是一件很容易的事情。传统的数字取证方法将自然图像与计算机图形图像区分开来,主要是基于对图像的统计分析,如CMOS图像传感器中的噪声或拜耳矩阵估计。另一方面,本文采用了基于人脸识别和目标分类的方法。实验表明,我们的方法非常有效,准确率超过99%。我们基于对象分类的方法还可以告诉我们输入图像被视为人类/化身面孔的可能性有多大。
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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