基于社会群体轨迹的智能楼宇访问控制潜在模拟检测

Gabriel Mariano de Castro SIlva, Jaime Simão Sichman
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引用次数: 2

摘要

在许多领域,应用程序使用人员轨迹的时空数据来进行模拟欺诈检测。基于异常的方法包括基于用户的频繁路径和时间表构建移动性配置文件,并将新轨迹与这些配置文件进行比较:如果一些新轨迹与用户配置文件不一致,则检测到潜在的模拟。然而,之前的研究并没有将旅行同伴纳入用户的资料中,尽管在社会群体中进行活动是人类行为的固有特征。智能建筑上的物理访问控制系统可以提供活动同伴信息,因为社会群体自然出现在这些建筑中托管的组织中,这些系统可以捕获群体轨迹。本文探讨了利用群体轨迹模式数据丰富的时空移动轮廓作为智能建筑模拟欺诈检测的新框架的可行性。实证分析结果表明,将同伴活动信息添加到移动性配置文件中以增强基于异常的模拟攻击检测是可行的。
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Using Social Group Trajectories for Potential Impersonation Detection on Smart Buildings Access Control
In many domains, applications use people trajectories' spatiotemporal data for impersonation fraud detection purposes. Anomaly-based approaches consist in constructing mobility profiles based on users' frequent paths and schedules and comparing new trajectories against these profiles: if some new trajectory is not consistent with the user profile, a potential impersonation is detected. Previous studies, however, do not include traveling companions in users' profiles, although performing activities in social groups is inherent to human behavior. Physical access control systems on smart buildings can provide activity companions information since social groups naturally emerge on organizations hosted in such buildings and these systems can capture group trajectories. This paper explores the feasibility of using spatiotemporal mobility profiles enriched with group trajectory pattern data as a novel framework for impersonation fraud detection in smart buildings. An empirical analysis is conducted, and results show that it is feasible to add companions activities information to mobility profiles in order to enhance anomaly-based impersonation attack detection.
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