Presentation Attack Detection in Face Biometric Systems Using Raw Sensor Data from Smartphones

P. Wasnik, K. Raja, Ramachandra Raghavendra, C. Busch
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引用次数: 9

Abstract

Applicability of the face recognition for smartphone-based authentication applications is increasing for different domains such as banking and e-commerce. The unsupervised data capture of face characteristics in biometric applications on smartphones presents the vulnerability to attack the systems using artefact samples. The threat of presentation attacks (a.k.a spoofing attacks) need to be handled to enhance the security of the biometric system. In this work, we present a new approach of using the raw sensor data. We first obtain the residual image corresponding to noise by subtracting the median filtered version of raw data and then computing simple energy value to detect the artefact based presentations. The presented approach uses simple threshold and thereby overcomes the need for learning complex classifiers which are challenging to work on unseen attacks. The proposed method is evaluated using a newly collected database of 390 live presentation attempts of face characteristics and 1530 attack presentations consisting of electronic screen attacks and printed attacks on the iPhone 6S smartphone. Significantly lower average classification error (
使用智能手机原始传感器数据的面部生物识别系统中的呈现攻击检测
人脸识别在基于智能手机的身份验证应用中的适用性正在增加,用于银行和电子商务等不同领域。在智能手机上的生物识别应用中,人脸特征的无监督数据捕获呈现出使用人工样本攻击系统的脆弱性。为了提高生物识别系统的安全性,需要处理表示攻击(又称欺骗攻击)的威胁。在这项工作中,我们提出了一种使用原始传感器数据的新方法。我们首先通过减去原始数据的中值滤波版本获得与噪声对应的残差图像,然后计算简单的能量值来检测基于伪影的表示。所提出的方法使用简单的阈值,从而克服了学习复杂分类器的需要,这些分类器在处理看不见的攻击时具有挑战性。使用新收集的390次面部特征实时演示尝试和1530次攻击演示(包括对iPhone 6S智能手机的电子屏幕攻击和打印攻击)的数据库对所提出的方法进行了评估。显著降低平均分类误差(
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