Face spoofing detection from single images using micro-texture analysis

Jukka Määttä, A. Hadid, M. Pietikäinen
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引用次数: 629

Abstract

Current face biometric systems are vulnerable to spoofing attacks. A spoofing attack occurs when a person tries to masquerade as someone else by falsifying data and thereby gaining illegitimate access. Inspired by image quality assessment, characterization of printing artifacts, and differences in light reflection, we propose to approach the problem of spoofing detection from texture analysis point of view. Indeed, face prints usually contain printing quality defects that can be well detected using texture features. Hence, we present a novel approach based on analyzing facial image textures for detecting whether there is a live person in front of the camera or a face print. The proposed approach analyzes the texture of the facial images using multi-scale local binary patterns (LBP). Compared to many previous works, our proposed approach is robust, computationally fast and does not require user-cooperation. In addition, the texture features that are used for spoofing detection can also be used for face recognition. This provides a unique feature space for coupling spoofing detection and face recognition. Extensive experimental analysis on a publicly available database showed excellent results compared to existing works.
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基于微纹理分析的单幅人脸欺骗检测
目前的面部生物识别系统很容易受到欺骗攻击。当一个人试图通过伪造数据来伪装成其他人,从而获得非法访问权限时,就会发生欺骗攻击。受图像质量评估、打印工件特征表征以及光反射差异的启发,我们提出从纹理分析的角度来解决欺骗检测问题。事实上,面部指纹通常包含可以使用纹理特征很好地检测到的印刷质量缺陷。因此,我们提出了一种基于分析面部图像纹理的新方法来检测相机前是否有真人或人脸指纹。该方法利用多尺度局部二值模式(LBP)分析人脸图像的纹理特征。与许多先前的工作相比,我们提出的方法鲁棒性强,计算速度快,不需要用户合作。此外,用于欺骗检测的纹理特征也可以用于人脸识别。这为欺骗检测和人脸识别的耦合提供了独特的特征空间。在一个公开可用的数据库上进行广泛的实验分析,与现有的工作相比,结果非常好。
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