On the vulnerability of extended Multispectral face recognition systems towards presentation attacks

Ramachandra Raghavendra, K. Raja, S. Venkatesh, F. A. Cheikh, C. Busch
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引用次数: 43

Abstract

Presentation attacks (a.k.a, direct attacks or spoofing attacks) against face recognition systems have emerged as a serious security threat. To mitigate these attacks on conventional face recognition systems, several Presentation Attack Detection (PAD) algorithms have been developed, which address various Presentation Attack Instruments (PAI) including 3D face masks, 2D photo, wrap photo and electronic display, that can be used for the attack. In this paper, we demonstrate and evaluate the vulnerability of an extended Multispectral face recognition system. The extended Multispectral system captures the face image across various spectral bands, thus, we propose to study each of these spectral bands for the vulnerability towards presentation attacks. We have employed a commercial Multispectral camera - SpectraCam™ that can capture seven different spectral bands to collect both bona-fide (a.k.a, live or normal or real) samples as well as artefact (or spoof) face samples. Extensive experiments are carried out on the newly compiled database to provide insights on the vulnerability of the extended Multispectral face system towards PAI generated using a printer. We have created the face artefacts using two different printers, which include laser and inkjet printers. Further, we have also evaluated the state-of-the-art PAD algorithms that are widely employed in conventional face PAD systems. Our study reveals the vulnerability of extended Multispectral face recognition system with respect to the print attack. The results obtained using state-of-the-art PAD algorithms further indicate the challenge to detect the presentation attacks in extended Multispectral face recognition systems.
扩展多光谱人脸识别系统对表示攻击的脆弱性研究
针对人脸识别系统的表示攻击(又称直接攻击或欺骗攻击)已经成为一种严重的安全威胁。为了减轻对传统人脸识别系统的这些攻击,已经开发了几种呈现攻击检测(PAD)算法,这些算法解决了各种呈现攻击工具(PAI),包括3D面具,2D照片,包装照片和电子显示器,可用于攻击。在本文中,我们演示和评估了一个扩展的多光谱人脸识别系统的脆弱性。扩展的多光谱系统捕获了不同光谱波段的人脸图像,因此,我们建议研究这些光谱波段对呈现攻击的脆弱性。我们采用了商用多光谱相机- SpectraCam™,可以捕获七个不同的光谱带,以收集真实(又名,活的或正常的或真实的)样本以及人工(或欺骗)面部样本。在新编译的数据库上进行了广泛的实验,以提供对使用打印机生成的PAI的扩展多光谱人脸系统的脆弱性的见解。我们使用两种不同的打印机,包括激光打印机和喷墨打印机,制作了面部人工制品。此外,我们还评估了在传统面部PAD系统中广泛使用的最先进的PAD算法。我们的研究揭示了扩展多光谱人脸识别系统在指纹攻击方面的脆弱性。使用最先进的PAD算法获得的结果进一步表明了在扩展多光谱人脸识别系统中检测呈现攻击的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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