Nadir Kamel Benamara, M. Keche, Murisi Wellington, Zhou Munyaradzi
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引用次数: 2
Abstract
Security is a major concern in Electronic Payment (E-Payment) systems. Usually, these systems are protected against illegal users, so-called hackers, by different means, such as Personal identification numbers (PINs), passwords, cards, etc. However, these hackers may manage to bypass this protection by having recourse to different strategies. Many techniques have been proposed to counter hacking attempts; however, there are still situations where an illegal user may succeed to access the E-payment system easily by stealing from a legal user its payment card. The use of Artificial Intelligence methods for face authentication, like deep learning, has made facial biometry a highly developing and accurate technology, especially in the past decade. In this paper, we propose the joint use of deep learning-based facial biometry and RFID cards to reinforce the security of an E-Payment system. By doing so, we ensure that a user should be physically present carrying his RFID card to be able to access the E-Payment system. We have tested three deep learning-based face authentication models and validated them on MUCT and CASIA Face-V5 datasets, to choose the most suitable one for our proposed secured E-Payment system, obtaining top verification rates of 99.90% and 99.26%, respectively. Two versions of this system are proposed; in the first version, which is based on a Personnel Computer (PC) and a Raspberry card, face authentication is implemented in a PC and the control of the RFID reader is performed by a Raspberry Pi 3, whereas in the second version, which may be considered as an embedded system, all the job is accomplished by the Raspberry Pi.
安全性是电子支付(E-Payment)系统的主要关注点。通常,这些系统通过不同的方式来防止非法用户,即所谓的黑客,例如个人识别号码(pin)、密码、卡片等。然而,这些黑客可能会通过采取不同的策略来绕过这种保护。人们提出了许多技术来对抗黑客攻击;然而,仍有非法使用者可以透过盗取合法使用者的支付卡,轻易进入电子支付系统的情况。人工智能方法在人脸认证中的应用,如深度学习,使得面部生物识别技术成为一项高度发展和精确的技术,尤其是在过去的十年里。在本文中,我们建议联合使用基于深度学习的面部生物识别和RFID卡来加强电子支付系统的安全性。通过这样做,我们确保用户必须亲自携带RFID卡,以便能够访问电子支付系统。我们测试了三种基于深度学习的人脸认证模型,并在MUCT和CASIA face - v5数据集上对它们进行了验证,以选择最适合我们所提出的安全电子支付系统的模型,最高验证率分别为99.90%和99.26%。提出了该系统的两个版本;在第一个版本中,基于个人电脑(PC)和树莓卡,人脸认证在PC上实现,RFID读取器的控制由树莓派3完成,而在第二个版本中,可以认为是一个嵌入式系统,所有的工作都由树莓派完成。