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A study on vulnerability and presentation attack detection in palmprint verification system

机译:掌纹验证系统中的漏洞和表示攻击检测研究

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摘要

As biometric systems become ubiquitous in the domain of personal authentication, it is of utmost importance that these systems are secured against attacks. Among various types of attacks on biometric systems, the presentation attack, which involves presenting a fake copy (artefact) of the real biometric to the biometric sensor to gain illegitimate access, is the most common one. Despite the serious threat posed by these attacks, not much work has been done to address this vulnerability in palmprint-based biometric systems. This paper demonstrates the vulnerability of a palmprint verification system to presentation attacks and proposes a novel presentation attack detection (PAD) approach to discriminating between real biometric samples and artefacts. The proposed PAD approach is inspired by a work that established relationship between the surface reflectance and a set of statistical features extracted from the image. Specifically, statistical features computed from the distributions of pixel intensities, sub-band wavelet coefficients and the grey-level co-occurrence matrix form the original feature set, and CFS-based feature selection approach selects the most discriminating feature subset. A trained binary classifier utilizes the selected feature subset to determine whether the acquired image is of real hand or an artefact. For performance evaluation, an antispoofing database-PALMspoof has been developed. This database comprises left- and right-hand images of 104 subjects, and three kinds of artefacts generated from these images. In addition to PALMspoof database, the biometric system's vulnerability has been assessed on display and print artefacts generated from two publicly available palmprint datasets. Our experimental results show that 1) the palmprint verification system is highly vulnerable with spoof acceptance of 84.56%; 2) the proposed PAD approach is effective against both print and display attacks, in both same-device and cross-device scenarios; and 3) the proposed approach for PAD provides an average improvement of 12.73 percentage points in classification error rate over local binary pattern (LBP)-based PAD approach.
机译:随着生物识别系统在个人身份验证领域变得无处不在,确保这些系统不受攻击至关重要。在对生物识别系统的各种类型的攻击中,表示攻击是最常见的一种表示攻击,其中涉及将真实生物特征的伪造副本(伪造品)呈现给生物特征传感器以进行非法访问。尽管这些攻击带来了严重的威胁,但是在基于掌纹的生物识别系统中,为解决此漏洞所做的工作还很少。本文演示了掌纹验证系统对呈现攻击的脆弱性,并提出了一种新颖的呈现攻击检测(PAD)方法,以区分真实的生物特征样本和人工制品。提出的PAD方法的灵感来自建立表面反射率与从图像提取的一组统计特征之间的关系的工作。具体而言,根据像素强度,子带小波系数和灰度共现矩阵的分布计算出的统计特征形成原始特征集,并且基于CFS的特征选择方法选择了最有区别的特征子集。训练有素的二进制分类器利用选定的特征子集来确定所获取的图像是真实手部还是伪像。为了评估性能,已经开发了反欺骗数据库-PALMspoof。该数据库包含104个对象的左手图像和右手图像,以及从这些图像生成的三种伪像。除了PALMspoof数据库外,还在从两个可公开获得的掌纹数据集生成的显示和印刷伪像上评估了生物识别系统的漏洞。我们的实验结果表明:1)掌纹验证系统非常容易受到欺骗,接受欺骗率为84.56%; 2)所提出的PAD方法在相同设备和跨设备的情况下均能有效抵抗打印和显示攻击; 3)与基于局部二进制模式(LBP)的PAD方法相比,所提出的PAD方法在分类错误率方面平均提高了12.73个百分点。

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