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Keystroke Biometric Systems for User Authentication

机译:用于用户身份验证的按键生物识别系统

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摘要

Keystroke biometrics (KB) authentication systems are a less popular form of access control, although they are gaining popularity. In recent years, keystroke biometric authentication has been an active area of research due to its low cost and ease of integration with existing security systems. Various researchers have used different methods and algorithms for data collection, feature representation, classification, and performance evaluation to measure the accuracy of the system, and therefore achieved different accuracy rates. Although recently, the support vector machine is most widely used by researchers, it seems that ensemble methods and artificial neural networks yield higher accuracy. Moreover, the overall accuracy of KB is still lower than other biometric authentication systems, such as iris. The objective of this paper is to present a detailed survey of the most recent researches on keystroke dynamic authentication, the methods and algorithms used, the accuracy rate, and the shortcomings of those researches. Finally, the paper identifies some issues that need to be addressed in designing keystroke dynamic biometric systems, makes suggestions to improve the accuracy rate of KB systems, and proposes some possible future research directions.
机译:击键生物识别(KB)身份验证系统虽然不受欢迎,但它是访问控制的一种较不流行的形式。近年来,按键生物识别技术由于其成本低廉且易于与现有安全系统集成而成为研究的活跃领域。各种研究人员已使用不同的方法和算法进行数据收集,特征表示,分类和性能评估,以测量系统的准确性,因此获得了不同的准确性。尽管最近,支持向量机在研究人员中得到了最广泛的应用,但似乎集成方法和人工神经网络可以产生更高的精度。而且,KB的整体准确性仍低于其他生物识别系统,例如虹膜。本文的目的是对击键动态身份验证的最新研究,使用的方法和算法,准确率以及这些研究的缺点进行详细的概述。最后,本文确定了设计按键动态生物识别系统时需要解决的一些问题,提出了提高知识库系统准确率的建议,并提出了一些可能的未来研究方向。

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