Repetition and Template Generalisability for Instance-Based Keystroke Biometric Systems

Siôn Parkinson, Saad Khan, Na Liu, Qing Xu
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Abstract

Keystroke timings can be used as a behavioural biometric, enabling passive and non-intrusive authentication. Fixed-text keystroke biometric systems involve the acquisition of keypress timings when typing a single phrase. They can be used in conjunction with a standard password authentication system to provide an increased level of security. Design decisions need to be made regarding the different technical aspects (e.g., feature sets, matching mechanism, etc.) of the system and there is a wealth of literature to guide this process. However, there is an absence of knowledge available when it comes to understanding how repetitions in user samples and characteristics of the password provided over an extended timeline can impact the system’s accuracy. In this paper, timings are collected from 65 participants, who are required to type the same passwords 4 times per week for 8 weeks, yielding a total of 81,920 timing datasets. A systematic analysis is then performed for each of the 8 weeks, following the same template creation and matching process, to gain an understanding of which week’s timings produce more generalised templates, providing a lower Equal Error Rate when matched against samples from all weeks.
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基于实例的击键生物识别系统的重复和模板通用性
击键时间可以用作行为生物识别,实现被动和非侵入性身份验证。固定文本击键生物识别系统涉及在键入单个短语时获取按键时间。它们可以与标准密码身份验证系统结合使用,以提供更高级别的安全性。设计决策需要根据系统的不同技术方面(例如,功能集、匹配机制等)做出,有大量的文献可以指导这一过程。但是,在了解用户样本中的重复和在延长时间轴上提供的密码特征如何影响系统的准确性方面,缺乏可用的知识。在本文中,收集了65名参与者的时间,他们被要求每周输入4次相同的密码,持续8周,总共产生81,920个时间数据集。然后对8周中的每一周进行系统分析,遵循相同的模板创建和匹配过程,以了解哪一周的时间安排产生更一般化的模板,在与所有周的样本匹配时提供更低的相等错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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