使用击键动力学的在线用户认证系统

Asma Salem, A. Sharieh, R. Jabri
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引用次数: 0

摘要

如今,人们越来越多地使用移动设备与互联网联系在一起。他们倾向于在许多应用程序中使用他们的关键和敏感数据。这些应用程序通过用户身份验证提供安全性。密码认证是一种可靠、高效的访问控制方法,但还不够。需要额外的过程来增强这些应用程序的安全性。击键动力学(KSD)是一种常见的基于行为的系统。KSD节奏使用从几个设备中提取和处理的定时和非定时特征的组合。本文提出了一种基于两个因素的身份验证方法:密码和KSD。此外,本文还对基于ksd的身份验证系统进行了广泛的比较分析。提出了一种从ksd中采集定时和非定时信息的键盘原型。因此,所提出的方法使用定时和几个非定时特征。这些特性在改进KSD行为身份验证系统的性能度量方面发挥了重要作用。已经进行了几个实验,并显示了作为第二个身份验证因素的性能度量的可接受水平。该方法已经使用多个分类器进行了测试。当使用随机森林分类器时,该方法的分类准确率达到100%,错误率为0%。
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Online User Authentication System Using Keystroke Dynamics
Nowadays, people become more connected to the internet using their mobile devices. They tend to use their critical and sensitive data among many applications. These applications provide security via user authentication. Authentication by passwords is a reliable and efficient access control procedure, but it is not sufficient. Additional procedures are needed to enhance the security of these applications. Keystroke dynamics (KSD) is one of the common behavioral based systems. KSD rhythm uses combinations of timing and non-timing features that are extracted and processed from several devices. This work presents a novel authentication approach based on two factors: password and KSD. Also, it presents extensive comparative analysis conducted between authentication systems based on KSDs. It proposes a prototype for a keyboard in order to collect timing and non-timing information from KSDs. Hence, the proposed approach uses timing and several non-timing features. These features have a demonstrated significant role for improving the performance measures of KSD behavioral authentication systems. Several experiments have been done and show acceptable level in performance measures as a second authentication factor. The approach has been tested using multiple classifiers. When Random Forest classifier has been used, the approach reached 0% error rate with 100% accuracy for classification.
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