SWAPPED! Digital face presentation attack detection via weighted local magnitude pattern

Akshay Agarwal, Richa Singh, Mayank Vatsa, A. Noore
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引用次数: 54

Abstract

Advancements in smartphone applications have empowered even non-technical users to perform sophisticated operations such as morphing in faces as few tap operations. While such enablements have positive effects, as a negative side, now anyone can digitally attack face (biometric) recognition systems. For example, face swapping application of Snapchat can easily create “swapped” identities and circumvent face recognition system. This research presents a novel database, termed as SWAPPED — Digital Attack Video Face Database, prepared using Snap chat's application which swaps/stitches two faces and creates videos. The database contains bonafide face videos and face swapped videos of multiple subjects. Baseline face recognition experiments using commercial system shows over 90% rank-1 accuracy when attack videos are used as probe. As a second contribution, this research also presents a novel Weighted Local Magnitude Pattern feature descriptor based presentation attack detection algorithm which outperforms several existing approaches.
交换!基于加权局部幅度模式的数字人脸呈现攻击检测
智能手机应用程序的进步使非技术用户甚至可以像轻触操作一样执行面部变形等复杂操作。虽然这样的启用有积极的影响,但作为消极的一面,现在任何人都可以对面部(生物识别)识别系统进行数字攻击。例如,Snapchat的换脸应用可以很容易地创建“交换”身份,绕过人脸识别系统。本研究提出了一个新的数据库,称为交换-数字攻击视频面部数据库,使用Snap chat的应用程序准备,该应用程序交换/缝合两张脸并创建视频。该数据库包含多受试者的真实人脸视频和人脸交换视频。基于商业系统的基线人脸识别实验表明,当攻击视频作为探针时,该算法的rank-1准确率超过90%。作为第二个贡献,本研究还提出了一种新的基于加权局部幅度模式特征描述符的表示攻击检测算法,该算法优于现有的几种方法。
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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