Automatic fingerprint recognition systems are the most extensively used systems for person authentication although they are vulnerable to Presentation attacks. Artificial artifacts created with the help of various materials are used to deceive these systems causing a threat to the security of fingerprint-based applications. This paper proposes a novel end-to-end model to detect fingerprint Presentation attacks. The proposed model incorporates MobileNet as a feature extractor and a Support Vector Classifier as a classifier to detect presentation attacks in cross-material and cross-sensor paradigms. The feature extractor's parameters are learned with the loss generated by the support vector classifier. The proposed model eliminates the need for intermediary data preparation procedures, unlike other static hybrid architectures. The performance of the proposed model has been validated on benchmark LivDet 2011, 2013, 2015, 2017, and 2019 databases, and overall accuracy of 98.64%, 99.50%, 97.23%, 95.06%, and 95.20% is achieved on these databases, respectively. The performance of the proposed model is compared with state-of-the-art methods and the proposed method outperforms in cross-material and cross-sensor paradigms in terms of average classification error.
翻译:自动指纹识别系统是用于个人认证的最广泛使用的系统,尽管它们很容易受到演示攻击。在各种材料的帮助下制造的人工制品被用来欺骗这些系统,对指纹应用的安全构成威胁。本文件提出一个新的端到端模型,以检测指纹演示攻击。拟议模型将移动网络作为特征提取器,支持矢量分类器作为分类器,以检测跨物质和交叉传感器模式中的演示攻击。特征提取器参数与支持矢量分类器造成的损失一起学习。拟议模型消除了对中间数据编制程序的需求,而与其他固定混合结构不同。拟议模型的性能已在2011、2013、2015、2017和2019年基准LivDet数据库上得到验证,这些数据库的总体准确度分别为98.64%、99.50%、97.23%、95.06%和95.20%。拟议模型的性能与最新的方法和跨材料和跨传感器范式的拟议方法在平均分类误差中进行了比较。</s>