Detecting Finger-Vein Presentation Attacks Using 3D Shape & Diffuse Reflectance Decomposition

Jag Mohan Singh, S. Venkatesh, K. Raja, Raghavendra Ramachandra, C. Busch
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引用次数: 4

Abstract

Despite the high biometric performance, finger-vein recognition systems are vulnerable to presentation attacks (aka., spoofing attacks). In this paper, we present a new and robust approach for detecting presentation attacks on finger-vein biometric systems exploiting the 3D Shape (normal-map) and material properties (diffuse-map) of the finger. Observing the normal-map and diffuse-map exhibiting enhanced textural differences in comparison with the original finger-vein image, especially in the presence of varying illumination intensity, we propose to employ textural feature-descriptors on both of them independently. The features are subsequently used to compute a separating hyper-plane using Support Vector Machine (SVM) classifiers for the features computed from normal-maps and diffuse-maps independently. Given the scores from each classifier for normal-map and diffuse-map, we propose sum-rule based score level fusion to make detection of such presentation attack more robust. To this end, we construct a new database of finger-vein images acquired using a custom capture device with three inbuilt illuminations and validate the applicability of the proposed approach. The newly collected database consists of 936 images, which corresponds to 468 bona fide images and 468 artefact images. We establish the superiority of the proposed approach by benchmarking it with classical textural feature-descriptor applied directly on finger-vein images. The proposed approach outperforms the classical approaches by providing the Attack Presentation Classification Error Rate (APCER) & Bona fide Presentation Classification Error Rate (BPCER) of 0% compared to comparable traditional methods.
利用三维形状和漫反射分解检测手指静脉呈现攻击
尽管具有很高的生物识别性能,但手指静脉识别系统很容易受到演示攻击(又名。(欺骗攻击)。在本文中,我们提出了一种新的鲁棒方法来检测手指静脉生物识别系统的呈现攻击,利用手指的3D形状(法线图)和材料属性(扩散图)。观察到法线图和漫射图与原始手指静脉图像相比呈现出增强的纹理差异,特别是在光照强度变化的情况下,我们建议在两者上分别使用纹理特征描述符。这些特征随后被用于计算分离的超平面,使用支持向量机(SVM)分类器对从法线映射和扩散映射独立计算的特征进行分类。考虑到每个分类器对于normal-map和diffusion -map的分数,我们提出了基于和规则的分数水平融合,使这种表示攻击的检测更加鲁棒。为此,我们构建了一个新的手指静脉图像数据库,该数据库使用具有三个内置照明的定制捕获设备获取,并验证了所提出方法的适用性。新采集的图像共936张,其中真实图像468张,人工图像468张。通过将该方法与直接应用于手指静脉图像的经典纹理特征描述符进行对比,确立了该方法的优越性。与传统方法相比,该方法的攻击表现分类错误率(APCER)和真实表现分类错误率(BPCER)均为0%,优于传统方法。
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