Image quality assessment based outlier detection for face anti-spoofing

K. Karthik, Balaji Rao Katika
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引用次数: 7

Abstract

Planar spoofing is a well researched problem, wherein a high quality planar photograph can be replayed in front of a still camera as a substitute for another individual's face. Most modern day face recognition systems can be fooled by this process, as the perceptual information contained in a photo-of-a-photo, is virtually the same as that of a natural photograph of an individual. Current solutions attempt to detect this form of planar-spoofing through an extrinsic training process wherein both planar samples as well as regular photos are included as separate training sets. To avoid this form of explicit discriminant model-learning, we propose a single class training procedure for establishing and quantifying the quality of natural photographs taken under different lighting conditions, in terms of their CONTRAST PROFILE. Once this distribution is learnt, a suitable threshold is set based on the mean and standard deviation to pick up outliers. In this paper, we show that with just single poses of subjects, it is possible to achieve a low Equal Error Rate (EER) of 21.56% on the CASIA dataset and a rate of 8.57% upon cross-validation with a trimmed and shortened version of the MSU dataset.
基于图像质量评估的人脸离群点检测
平面欺骗是一个研究得很好的问题,其中一张高质量的平面照片可以在静止相机前重播,作为另一个人的脸的替代品。大多数现代面部识别系统都可能被这个过程所欺骗,因为照片中的照片所包含的感知信息实际上与个人的自然照片相同。目前的解决方案试图通过外部训练过程来检测这种形式的平面欺骗,其中平面样本和常规照片都被作为单独的训练集。为了避免这种形式的显式判别模型学习,我们提出了一个单类训练程序,用于建立和量化在不同照明条件下拍摄的自然照片的对比度。一旦了解了这个分布,就会根据平均值和标准差设置一个合适的阈值,以挑选出异常值。在本文中,我们表明,仅使用受试者的单一姿势,CASIA数据集的相等错误率(EER)可以达到21.56%的低水平,而与修剪和缩短的MSU数据集交叉验证的相等错误率(EER)为8.57%。
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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