Shalaby Ahmed, Gad Ramadan, Hemdan Ezz El-Din, El-Fishawy Nawal
Department of Computer Science and Engineering, Faculty of Electronic Engineering, Menouf, Menoufia, Egypt.
PeerJ Comput Sci. 2021 Mar 2;7:e381. doi: 10.7717/peerj-cs.381. eCollection 2021.
Nowadays, the identity verification of banks' clients at Automatic Teller Machines (ATMs) is a very critical task. Clients' money, data, and crucial information need to be highly protected. The classical ATM verification method using a combination of credit card and password has a lot of drawbacks like Burglary, robbery, expiration, and even sudden loss. Recently, iris-based security plays a vital role in the success of the Cognitive Internet of Things (C-IoT)-based security framework. The iris biometric eliminates many security issues, especially in smart IoT-based applications, principally ATMs. However, integrating an efficient iris recognition system in critical IoT environments like ATMs may involve many complex scenarios. To address these issues, this article proposes a novel efficient full authentication system for ATMs based on a bank's mobile application and a visible light environments-based iris recognition. It uses the deep Convolutional Neural Network (CNN) as a feature extractor, and a fully connected neural network (FCNN)-with Softmax layer-as a classifier. Chaotic encryption is also used to increase the security of iris template transmission over the internet. The study and evaluation of the effects of several kinds of noisy iris images, due to noise interference related to sensing IoT devices, bad acquisition of iris images by ATMs, and any other system attacks. Experimental results show highly competitive and satisfying results regards to accuracy of recognition rate and training time. The model has a low degradation of recognition accuracy rates in the case of using noisy iris images. Moreover, the proposed methodology has a relatively low training time, which is a useful parameter in a lot of critical IoT based applications, especially ATMs in banking systems.
如今,银行客户在自动取款机(ATM)上的身份验证是一项非常关键的任务。客户的资金、数据和关键信息需要得到高度保护。使用信用卡和密码组合的传统ATM验证方法存在许多缺点,如盗窃、抢劫、过期,甚至突然丢失。最近,基于虹膜的安全技术在基于认知物联网(C-IoT)的安全框架的成功中发挥着至关重要的作用。虹膜生物识别技术消除了许多安全问题,特别是在基于智能物联网的应用中,主要是自动取款机。然而,在自动取款机等关键物联网环境中集成高效的虹膜识别系统可能涉及许多复杂的场景。为了解决这些问题,本文提出了一种基于银行移动应用和基于可见光环境的虹膜识别的新型高效自动取款机全认证系统。它使用深度卷积神经网络(CNN)作为特征提取器,以及带有Softmax层的全连接神经网络(FCNN)作为分类器。还使用混沌加密来提高虹膜模板在互联网上传输的安全性。研究和评估了几种噪声虹膜图像的影响,这些影响是由于与传感物联网设备相关的噪声干扰、自动取款机对虹膜图像的不良采集以及任何其他系统攻击造成的。实验结果表明,在识别率和训练时间的准确性方面具有极具竞争力和令人满意的结果。在使用噪声虹膜图像的情况下,该模型的识别准确率下降较低。此外,所提出的方法具有相对较低的训练时间,这在许多基于关键物联网的应用中是一个有用的参数,尤其是银行系统中的自动取款机。