Currently, it is ever more common to access online services for activities which formerly required physical attendance. From banking operations to visa applications, a significant number of processes have been digitised, especially since the advent of the COVID-19 pandemic, requiring remote biometric authentication of the user. On the downside, some subjects intend to interfere with the normal operation of remote systems for personal profit by using fake identity documents, such as passports and ID cards. Deep learning solutions to detect such frauds have been presented in the literature. However, due to privacy concerns and the sensitive nature of personal identity documents, developing a dataset with the necessary number of examples for training deep neural networks is challenging. This work explores three methods for synthetically generating ID card images to increase the amount of data while training fraud-detection networks. These methods include computer vision algorithms and Generative Adversarial Networks. Our results indicate that databases can be supplemented with synthetic images without any loss in performance for the print/scan Presentation Attack Instrument Species (PAIS) and a loss in performance of 1% for the screen capture PAIS.
翻译:目前,为以前需要亲自出勤的活动获取在线服务越来越常见。从银行业务到签证申请,大量程序已经数字化,特别是自COVID-19大流行以来,需要用户进行远程生物鉴别认证。在下行方面,有些主体打算通过使用假身份证件(如护照和身份证)干扰远程系统的正常运行,以谋私利。文献中提出了发现此类欺诈的深入学习办法。然而,由于隐私问题和个人身份证件的敏感性质,开发一套带有培训深神经网络所需实例的数据集具有挑战性。这项工作探索了三种合成生成身份证图像的方法,以增加数据数量,同时培训欺诈检测网络。这些方法包括计算机视觉算法和感官辅助网络。我们的结果表明,数据库可以补充合成图像,而不会丧失印刷/感应式攻击仪器物种(PAIS)的性能和屏幕捕捉PAIS1%的性能。