In this paper, an updated two-stage, end-to-end Presentation Attack Detection method for remote biometric verification systems of ID cards, based on MobileNetV2, is presented. Several presentation attack species such as printed, display, composite (based on cropped and spliced areas), plastic (PVC), and synthetic ID card images using different capture sources are used. This proposal was developed using a database consisting of 190.000 real case Chilean ID card images with the support of a third-party company. Also, a new framework called PyPAD, used to estimate multi-class metrics compliant with the ISO/IEC 30107-3 standard was developed, and will be made available for research purposes. Our method is trained on two convolutional neural networks separately, reaching BPCER\textsubscript{100} scores on ID cards attacks of 1.69\% and 2.36\% respectively. The two-stage method using both models together can reach a BPCER\textsubscript{100} score of 0.92\%.
翻译:本文介绍了基于移动网络V2的ID卡远程生物鉴别核查系统的最新两阶段、端到端演示攻击检测方法,其中使用了印刷、显示、复合(基于作物和碎块区域)、塑料(聚氯乙烯)和使用不同捕捉来源的合成身份证图像等几种演示攻击性物种,该提议是在一家第三方公司的支持下,利用一个由190 000个真实智利身份证图像组成的数据库开发的。此外,还开发了一个称为PyPAD的新框架,用于估计符合ISO/IEC 30107-3标准的多级指标,并将用于研究目的。我们的方法分别针对两个革命神经网络进行了培训,分别达到1.69 ⁇ 和2.36 ⁇ 的BPCER\ textsubscript{100}ID卡袭击分数。两个模型的两阶段方法合用可达到0.92 ⁇ 。