An Effective Security Protocol Design for IRIS based Credential Evaluation using Intensive Deep Learning Scheme

R. R, H. K, K. Malathy, G. Sivagamidevi, C. V. Sudhakar, V. Indhumathi
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引用次数: 1

Abstract

The component of a system charged with ensuring the security of its users is among its most crucial parts. It has been demonstrated that using a password or login that is too basic makes you vulnerable to hackers and does not ensure a high level of security. Authentication using biometric methods can be achieved in several ways. Some of the most advanced and reliable are facial recognition technology and iris recognition. Because it relies heavily on detection of patterns, it is able to reliably identify the rightful owner of an Iris scan. Accuracy as well as effectiveness have both been greatly enhanced in the resultant recognition system. Security breaches and other identification scams are on the rise, making it all the more crucial to implement a robust biometric system. The option that has gained a lot of attention is biometric identification. The iris's potential as a biometric has gained traction in recent years. This quantifiable quality ensures great productivity and precision, which is what triggered the phenomenon. We present a complete ResNet50-based deep learning system for iris identification in this study. Utilizing only a small number of training photos from every class, we train our algorithm on a popular identification of iris dataset, achieving significant gains over prior methods. In addition, we introduce a visualization method that may identify key features of iris pictures that have a significant bearing on the precision of recognition. We anticipate that this approach will be utilized extensively in the future to improve the scalability and precision of various biometrics identification jobs
基于深度学习的IRIS证书评估安全协议设计
系统中负责确保用户安全的组件是其最关键的部分之一。事实证明,使用过于简单的密码或登录会让你容易受到黑客的攻击,也不能确保高水平的安全性。使用生物识别方法的身份验证可以通过几种方式实现。其中最先进、最可靠的是面部识别技术和虹膜识别技术。因为它在很大程度上依赖于模式检测,所以它能够可靠地识别虹膜扫描的合法所有者。由此产生的识别系统的准确性和有效性都得到了极大的提高。安全漏洞和其他身份识别骗局正在上升,这使得实施一个强大的生物识别系统变得更加重要。最受关注的是生物识别技术。近年来,虹膜作为生物识别技术的潜力越来越受到关注。这种可量化的质量确保了高生产率和精度,这就是引发这种现象的原因。在这项研究中,我们提出了一个完整的基于resnet50的虹膜识别深度学习系统。仅利用来自每个类的少量训练照片,我们在一个流行的虹膜识别数据集上训练我们的算法,比以前的方法取得了显著的进步。此外,我们还介绍了一种可视化方法,可以识别虹膜图像中对识别精度有重要影响的关键特征。我们预计这种方法将在未来广泛应用,以提高各种生物识别工作的可扩展性和精度
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