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Oscillating patterns based face antispoofing approach against video replay

机译:基于振动模式的人脸防欺骗方法,可防止视频重放

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摘要

Typically, an automatic face authentication (FA) procedure begins with data (facial images) acquisition, procedure that can be carried out with or without human monitoring (in unconstrained settings), the subsequent steps being automatically processed. When the human monitoring is absent for the access procedure (i.e., the system is operating in the “wild”), the current FA systems can be easily cheated by spoofing identities using photographs or recorded video playback containing genuine information. The aim of this paper is to present an approach to indicating potential spoof attacks when a video recording of a genuine user is playback in front of a FA system. The approach relies on detecting specific image artifacts, more precisely oscillating patterns. Smooth image areas are first identified in the pixel domain as containing potential oscillating-like patterns. Several image statistics are next extracted and corresponding feature vectors are formed. Eventually, these feature vectors are classified as real or attack feature vectors by means of Lagrangian Support Vector Machines (LSVMs). When compared to two state-of-the-art methods, namely local binary patterns (LBP) and concentric Fourier based features, the experimental results indicate that the proposed approach substantially outperforms the two for this particular type of video data.
机译:通常,自动面部认证(FA)程序从数据(面部图像)获取开始,该过程可以在有或没有人为监视的情况下(在不受限制的设置下)执行,随后的步骤将自动进行处理。当访问程序缺少人工监视时(即系统在“狂野”中运行),可以通过使用包含真实信息的照片或录制的视频回放来欺骗身份,轻易地欺骗当前的FA系统。本文的目的是提出一种在FA系统前播放真实用户的视频记录时指示潜在欺骗攻击的方法。该方法依赖于检测特定的图像伪像,更准确地说是振荡模式。首先在像素域中将平滑图像区域标识为包含潜在的类似振荡的图案。接下来提取几个图像统计数据,并形成相应的特征向量。最终,这些特征向量通过拉格朗日支持向量机(LSVM)分类为真实或攻击特征向量。当与两种最新方法(即本地二进制模式(LBP)和基于同心傅里叶的特征)进行比较时,实验结果表明,对于这种特殊类型的视频数据,建议的方法明显优于二者。

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