论文标题

基于零拍的指纹表现攻击检测系统

A Zero-Shot based Fingerprint Presentation Attack Detection System

论文作者

Liu, Haozhe, Zhang, Wentian, Liu, Guojie, Liu, Feng

论文摘要

随着演示攻击的发展,自动指纹识别系统(AFRSS)容易受到演示攻击的影响。因此,已经提出了许多表现攻击检测方法(PAD),以确保AFR的正常利用。但是,大规模演示攻击图像和低级概括能力的需求始终误入了现有的PAD方法的实际表现。因此,我们提出了一种新型的零弹性表现攻击检测模型,以确保PAD模型的概括。提出的基于生成模型的ZSPAD模型在建立过程中不会利用任何负样本,从而确保了基于各种类型或材料的表现攻击的鲁棒性。与其他基于自动编码器的模型不同,提出了细粒度的MAP体系结构来完善自动编码器网络的重建误差,并利用特定于任务的高斯模型来提高聚类的质量。同时,为了提高所提出模型的性能,本文讨论了9个置信分数。实验结果表明,ZSPAD模型是ZSPAD的最新技术,MS得分是最佳置信得分。与现有方法相比,所提出的ZSPAD模型的性能优于基于功能的方法,在多摄像机设置下,提出的方法在很少的培训数据中表现出了基于学习的方法的表现。当有大量培训数据时,它们的结果相似。

With the development of presentation attacks, Automated Fingerprint Recognition Systems(AFRSs) are vulnerable to presentation attack. Thus, numerous methods of presentation attack detection(PAD) have been proposed to ensure the normal utilization of AFRS. However, the demand of large-scale presentation attack images and the low-level generalization ability always astrict existing PAD methods' actual performances. Therefore, we propose a novel Zero-Shot Presentation Attack Detection Model to guarantee the generalization of the PAD model. The proposed ZSPAD-Model based on generative model does not utilize any negative samples in the process of establishment, which ensures the robustness for various types or materials based presentation attack. Different from other auto-encoder based model, the Fine-grained Map architecture is proposed to refine the reconstruction error of the auto-encoder networks and a task-specific gaussian model is utilized to improve the quality of clustering. Meanwhile, in order to improve the performance of the proposed model, 9 confidence scores are discussed in this article. Experimental results showed that the ZSPAD-Model is the state of the art for ZSPAD, and the MS-Score is the best confidence score. Compared with existing methods, the proposed ZSPAD-Model performs better than the feature-based method and under the multi-shot setting, the proposed method overperforms the learning based method with little training data. When large training data is available, their results are similar.

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