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Keystroke dynamics-based user authentication using freely typed text based on user-adaptive feature extraction and novelty detection

机译:基于Keystroke动态的用户身份验证使用自适应特征提取和新颖性检测的自由键入文本

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摘要

Keystroke dynamics has been used to strengthen password-based user authentication systems by considering the typing characteristics of legitimate users. The main problem with login-based authentication systems is that they cannot authenticate users after login access is granted. To ensure continuous user authentication, keystroke dynamics collected from freely typed text during the login period has been utilized; however, the authentication performance was unsatisfactory. To enhance the performance of user authentication based on freely typed keystrokes, we propose a user-adaptive feature extraction method that captures individual users' distinctive typing behaviors embedded in relative typing speeds for different digraphs. Based on experimental results obtained from 150 participants with more than 13,000 keystrokes per each user in two languages (Korean and English), the proposed method achieved the best equal error rate (0.44). Furthermore, the authentication performance was enhanced by 45.3% for Korean and 39.0% for English compared with the benchmark fixed feature extraction method. (C) 2017 Elsevier B.V. All rights reserved.
机译:击键动态已被用于通过考虑合法用户的键入特征来加强基于密码的用户身份验证系统。基于登录的身份验证系统的主要问题是它们无法在授予登录访问后验证用户。为确保连续用户认证,已经利用了在登录期间从自由键入文本收集的击键动态;但是,身份验证性能不满意。为了提高基于自由键入的击键的用户认证性能,我们提出了一种用户自适应特征提取方法,其捕获嵌入不同数字的相对键入速度的单独用户的独特键入行为。基于从两种语言(韩语和英语)的每个用户超过13,000个击键的参与者获得的实验结果,所提出的方法实现了最佳的相同错误率(0.44)。此外,与基准固定特征提取方法相比,韩国的认证性能增强了45.3%和39.0%。 (c)2017 Elsevier B.v.保留所有权利。

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