针对合成伪造的击键动力学认证

D. Stefan, D. Yao
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引用次数: 41

摘要

我们描述了使用击键动力学模式进行身份验证和检测受感染的主机,并评估其对伪造攻击的鲁棒性。具体来说,我们提供了一个名为TUBA的远程身份验证框架,用于监视用户的输入模式。我们通过包括两个系列的仿真机器人在内的综合实验评估来评估TUBA的鲁棒性。支持向量机用于分类。本文报告了基于20个用户击键数据的结果。我们的工作表明,击键动力学对于所研究的合成伪造攻击是稳健的,攻击者从可用的击键数据集池中提取统计样本,而不是目标。TUBA特别适合于检测组织中的挤出,保护协作环境中主机的完整性,以及身份验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keystroke-dynamics authentication against synthetic forgeries
We describe the use of keystroke-dynamics patterns for authentication and detecting infected hosts, and evaluate its robustness against forgery attacks. Specifically, we present a remote authentication framework called TUBA for monitoring a user's typing patterns. We evaluate the robustness of TUBA through comprehensive experimental evaluation including two series of simulated bots. Support vector machine is used for classification. Our results based on 20 users' keystroke data are reported. Our work shows that keystroke dynamics is robust against synthetic forgery attacks studied, where attacker draws statistical samples from a pool of available keystroke datasets other than the target. TUBA is particularly suitable for detecting extrusion in organizations and protecting the integrity of hosts in collaborative environments, as well as authentication.
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