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Robust 2D/3D face mask presentation attack detection scheme by exploring multiple features and comparison score level fusion

机译:通过探索多种功能和比较分数水平融合来实现强大的2D / 3D面罩演示攻击检测方案

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The face mask presentation attack introduces a greater threat to the face recognition system. With the evolving technology in generating both 2D and 3D masks in a more sophisticated, realistic and cost effective manner encloses the face recognition system to more challenging vulnerabilities. In this paper, we present a novel Presentation Attack Detection (PAD) scheme that explores both global (i.e. face) and local (i.e. periocular or eye) region to accurately identify the presence of both 2D and 3D face masks. The proposed PAD algorithm is based on both Binarized Statistical Image Features (BSIF) and Local Binary Patterns (LBP) that can capture a prominent micro-texture features. The linear Support Vector Machine (SVM) is then trained independently on these two features that are applied on both local and global region to obtain the comparison scores. We then combine these scores using the weighted sum rule before making the decision about a normal (or real or live) or an artefact (or spoof) face. Extensive experiments are carried out on two publicly available databases for 2D and 3D face masks namely: CASIA face spoof database and 3DMAD shows the efficacy of the proposed scheme when compared with well-established state-of-the-art techniques.
机译:面罩呈现攻击对人脸识别系统造成了更大的威胁。随着技术的不断发展,以更复杂,更现实,更经济高效的方式生成2D和3D蒙版,人脸识别系统陷入了更具挑战性的漏洞。在本文中,我们提出了一种新颖的演示攻击检测(PAD)方案,该方案可探索全局(即面部)和局部(即眼周或眼部)区域,以准确识别2D和3D面罩的存在。提出的PAD算法是基于二值化统计图像特征(BSIF)和局部二值模式(LBP)的,它们可以捕获显着的微纹理特征。然后,分别对这两个特征(分别应用于局部和全局区域)上的线性支持向量机(SVM)进行训练,以获得比较分数。然后,在做出有关正常(或真实或实时)或伪影(或欺骗)面孔的决定之前,我们使用加权总和规则将这些分数相结合。在两个公开的2D和3D面罩数据库上进行了广泛的实验,分别是:CASIA面部欺骗数据库和3DMAD与完善的最新技术相比显示了该方案的有效性。

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