基于深度分解三维形状和漫反射的自动边检门鲁棒形态检测

Jag Mohan Singh, Raghavendra Ramachandra, K. Raja, C. Busch
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引用次数: 13

摘要

人脸识别被广泛应用于自动边境管制(ABC)门,它将护照或电子机读旅行证件(eMTRD)上的人脸图像与拍摄的图像进行核对,以确定护照持有人的身份。本文提出了一种基于差分形态检测的鲁棒形态检测算法。该方法将从ABC门捕获的真实图像和从eMRTD提取的数字人脸图像分解为弥散重建图像和量化法线映射。提取的特征进一步用于学习线性分类器(SVM)来检测基于ABC门的真实图像与从护照中提取的数字人脸图像之间差异的变形攻击。由于在ABC门内可以使用多个摄像机,我们扩展了所提出的方法来融合分类分数以生成最终的形态攻击检测决策。为了验证我们提出的算法,我们创建了一个包含588张图像的变形攻击数据库,其中使用佳能单反相机在室内照明环境中捕获真实图像,每个主体一个样本和相应的ABC门图像。我们将我们提出的方法与现有的最先进的方法进行基准测试,并且可以声明新方法在ABC门场景中显着优于以前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Morph-Detection at Automated Border Control Gate Using Deep Decomposed 3D Shape & Diffuse Reflectance
Face recognition is widely employed in Automated Border Control (ABC) gates, which verify the face image on passport or electronic Machine Readable Travel Document (eMTRD) against the captured image to confirm the identity of the passport holder. In this paper, we present a robust morph detection algorithm that is based on differential morph detection. The proposed method decomposes the bona fide image captured from the ABC gate and the digital face image extracted from the eMRTD into the diffuse reconstructed image and a quantized normal map. The extracted features are further used to learn a linear classifier (SVM) to detect a morphing attack based on the assessment of differences between the bona fide image from the ABC gate and the digital face image extracted from the passport. Owing to the availability of multiple cameras within an ABC gate, we extend the proposed method to fuse the classification scores to generate the final decision on morph-attack-detection. To validate our proposed algorithm, we create a morph attack database with overall 588 images, where bona fide are captured in an indoor lighting environment with a Canon DSLR Camera with one sample per subject and correspondingly images from ABC gates. We benchmark our proposed method with the existing state-of-the-art and can state that the new approach significantly outperforms previous approaches in the ABC gate scenario.
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