Autonomous abnormal behaviour detection in intelligence surveillance and reconnaissance applications

Rosa Meo, Roberto Esposito, M. Botta, Sergio Viola, Chee Ming Choor, Valter Mellano, F. Ciaramaglia
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Abstract

This paper describes a module that extracts rules or frequent patterns through data mining from a large database fed by targets detected by a Mission System installed on an unmanned airborne platform and the associated ground station to discover anomalies in local traffic. It has been demonstrated that the module is able to detect all tracks or targets present in the ground truth and also the paths followed by each tracks. Traffic anomalies can be detected by observing differences in extracted rules in reference missions compared to the current mission. The module will significantly reduce the operator workload as it can operate autonomously.
情报监视侦察应用中的自主异常行为检测
本文描述了一个模块,该模块通过数据挖掘从安装在无人机载平台上的任务系统和相关地面站检测到的目标提供的大型数据库中提取规则或频繁模式,以发现本地交通中的异常情况。已经证明,该模块能够检测到地面真实中存在的所有轨迹或目标,以及每个轨迹所遵循的路径。通过观察参考任务中提取的规则与当前任务的差异,可以检测流量异常。该模块可以自动操作,大大减少了操作人员的工作量。
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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