Presentation attack detection using Laplacian decomposed frequency response for visible spectrum and Near-Infra-Red iris systems

K. Raja, Ramachandra Raghavendra, C. Busch
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引用次数: 21

Abstract

Biometrics systems are being challenged at the sensor level using artefact presentation such as printed artefacts or electronic screen attacks. In this work, we propose a novel technique to detect the artefact iris images by decomposing the images into Laplacian pyramids of various scales and obtain frequency responses in different orientations. The obtained features are classified using a support vector machine with a polynomial kernel. Further, we extend the same technique with majority voting rule to provide the decision on artefact detection for video based iris recognition in the visible spectrum. The proposed technique is evaluated on the newly created visible spectrum iris video database and also Near-Infra-Red (NIR) images. The newly constructed visible spectrum iris video database is specifically tailored to study the vulnerability of presentation attacks on visible spectrum iris recognition using videos on a smartphone. The newly constructed database is referred as `Presentation Attack Video Iris Database' (PAVID) and consists of 152 unique iris patterns obtained from two different smartphone - iPhone 5S and Nokia Lumia 1020. The proposed technique has provided an Attack Classificiation Error Rate (ACER) of 0.64% on PAVID database and 1.37% on LiveDet iris dataset validating the robustness and applicability of the proposed presentation attack detection (PAD) algorithm in real life scenarios.
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基于拉普拉斯分解频率响应的可见光谱和近红外虹膜系统呈现攻击检测
生物识别系统在传感器层面受到人工制品呈现的挑战,如印刷人工制品或电子屏幕攻击。在这项工作中,我们提出了一种新的检测人工虹膜图像的技术,通过将图像分解成不同尺度的拉普拉斯金字塔,获得不同方向的频率响应。使用具有多项式核的支持向量机对得到的特征进行分类。此外,我们将相同的技术扩展为多数投票规则,为可见光谱中基于视频的虹膜识别提供伪影检测决策。在新创建的可见光谱虹膜视频数据库和近红外(NIR)图像上对该技术进行了评估。新构建的可见光谱虹膜视频数据库专门针对智能手机上的视频进行可见光谱虹膜识别的呈现攻击漏洞研究。新构建的数据库被称为“演示攻击视频虹膜数据库”(PAVID),由152种独特的虹膜模式组成,这些虹膜模式来自两款不同的智能手机——iPhone 5S和诺基亚Lumia 1020。该技术在PAVID数据库和LiveDet虹膜数据集上的攻击分类错误率(ACER)分别为0.64%和1.37%,验证了所提出的呈现攻击检测(PAD)算法在现实场景中的鲁棒性和适用性。
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