自由文本击键动力学的实际评估

Jiaju Huang, Daqing Hou, S. Schuckers
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引用次数: 11

摘要

自由文本击键动力学是一种行为生物识别技术,具有提供不引人注目和连续的用户身份验证的强大潜力。不幸的是,由于有限的数据可用性,自由文本击键动力学没有得到充分的测试。基于我们正在进行的使用自然环境中行为的数据收集的一个新的大型自由文本击键数据集,我们提出了第一个在尊重数据时间顺序的同时评估击键动力学的研究。具体来说,我们评估了使用会话形成测试样本的不同方式的性能,以及基于按键时间序列上的滑动窗口的连续身份验证形式。我们没有累积新的击键测试样本,而是使用在刚刚过去的n分钟滑动窗口中发生的击键来更新之前的样本。我们评估1至5分钟、10分钟和30分钟的滑动窗口。我们使用1分钟滑动窗口的最佳表现,达到了1%的FAR和11.5%的FRR。最后,我们通过人为地将不同部分的冒名者击键注入真正的测试样本,评估了击键动力学算法对仅持续几分钟的短快速内部攻击的敏感性。例如,经过评估的算法能够检测到持续2.5分钟或更长时间的内部攻击,概率为98.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A practical evaluation of free-text keystroke dynamics
Free text keystroke dynamics is a behavioral biometric that has the strong potential to offer unobtrusive and continuous user authentication. Unfortunately, due to the limited data availability, free text keystroke dynamics have not been tested adequately. Based on a novel large dataset of free text keystrokes from our ongoing data collection using behavior in natural settings, we present the first study to evaluate keystroke dynamics while respecting the temporal order of the data. Specifically, we evaluate the performance of different ways of forming a test sample using sessions, as well as a form of continuous authentication that is based on a sliding window on the keystroke time series. Instead of accumulating a new test sample of keystrokes, we update the previous sample with keystrokes that occur in the immediate past sliding window of n minutes. We evaluate sliding windows of 1 to 5, 10, and 30 minutes. Our best performer using a sliding window of 1 minute, achieves an FAR of 1% and an FRR of 11.5%. Lastly, we evaluate the sensitivity of the keystroke dynamics algorithm to short quick insider attacks that last only several minutes, by artificially injecting different portions of impostor keystrokes into the genuine test samples. For example, the evaluated algorithm is found to be able to detect insider attacks that last 2.5 minutes or longer, with a probability of 98.4%.
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