Robust face presentation attack detection on smartphones : An approach based on variable focus

K. Raja, P. Wasnik, Ramachandra Raghavendra, C. Busch
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引用次数: 2

Abstract

Smartphone based facial biometric systems have been well used in many of the security applications starting from simple phone unlocking to secure banking applications. This work presents a new approach of exploring the intrinsic characteristics of the smartphone camera to capture a number of stack images in the depth-of-field. With the set of stack images obtained, we present a new feature-free and classifier-free approach to provide the presentation attack resistant face biometric system. With the entire system implemented on the smartphone, we demonstrate the applicability of the proposed scheme in obtaining a stack of images with varying focus to effectively determine the presentation attacks. We create a new database of 13250 images at different focal length to present a detailed analysis of vulnerability together with the evaluation of proposed scheme. An extensive evaluation of the newly created database comprising of 5 different Presentation Attack Instruments (PAI) has demonstrated an outstanding performance on all 5 PAI through proposed approach. With the set ofcomplementary benefits of proposed approach illustrated in this work, we deduce the robustness towards unseen 2D attacks.
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基于可变焦点的智能手机鲁棒人脸呈现攻击检测方法
基于智能手机的面部生物识别系统已经广泛应用于许多安全应用,从简单的手机解锁到安全的银行应用。本文提出了一种探索智能手机相机内在特征的新方法,用于在景深上捕获大量堆叠图像。在此基础上,我们提出了一种新的无特征和无分类器的方法来提供抗攻击的人脸生物识别系统。通过在智能手机上实现整个系统,我们证明了所提出的方案在获取不同焦点的图像堆栈以有效确定呈现攻击方面的适用性。我们创建了一个包含13250张不同焦距图像的新数据库,以详细分析漏洞并对所提出的方案进行评估。通过对包含5种不同呈现攻击工具(PAI)的新创建数据库的广泛评估,表明该方法在所有5种PAI上都具有出色的性能。通过本文所述方法的互补优势,我们推断了对不可见的2D攻击的鲁棒性。
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