An efficient privacy-preserving user authentication scheme using image processing and blockchain technologies

Anees Ara, Avinash Sharma, D. Yadav
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引用次数: 3

Abstract

Abstract User authentication is a measurement challenge for handheld devices and online accounts such as bank accounts, social media accounts etc. because illegal access results in money loss and user privacy. Individual devices, online financial services, and intelligent spaces are three significant areas of concern for customer authentication procedures. Three ways have been identified for authentication factors: i) knowledge-factor, ii) Inherence factor, and iii) possession-factor. This study investigates two-way user authentication through image processing. CNN, RCNN, and Deepface are deep learning algorithms used for image recognition. We used imagechain for image storage and Blockchain for personal information storage (mobile number) to secure the database. The database is stored on an Ethereum-based blockchain. After determining whether the image is fake or real, match the webcam image with the imagechain; if both images match, the one-time password is given to the user’s cellphone number for login access. For image processing, Opencv is employed, and the Python library is used to execute machine and deep learning algorithms for user authentication. Test the proposed model on the 10 to 100 users for authentication. Accuracy of this experiment is 75.35, 76.33, 98.18 and cosine similarities of images are much better between images, but in case of fake image identification it achieved 97.35 % accuracy.
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一种使用图像处理和区块链技术的高效隐私保护用户身份验证方案
用户认证是手持设备和在线账户(如银行账户、社交媒体账户等)的测量挑战,因为非法访问会导致金钱损失和用户隐私。个人设备、在线金融服务和智能空间是客户身份验证过程关注的三个重要领域。鉴定因素有三种途径:1)知识因素;2)内在因素;3)占有因素。本研究探讨透过影像处理的双向使用者认证方法。CNN、RCNN和Deepface是用于图像识别的深度学习算法。我们使用imagechain存储图像,使用区块链存储个人信息(手机号码)来保证数据库的安全。数据库存储在基于以太坊的区块链上。在确定图像是真是假之后,将摄像头图像与图像链进行匹配;如果两张图片匹配,用户的手机号码将获得一次性密码,以便登录。对于图像处理,使用Opencv,并使用Python库执行机器和深度学习算法进行用户身份验证。在10到100个用户上测试建议的模型以进行身份验证。本实验的准确率分别为75.35、76.33、98.18,图像之间的余弦相似度要好得多,但在假图像识别中准确率达到了97.35%。
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来源期刊
CiteScore
3.10
自引率
21.40%
发文量
126
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