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Hierarchical abnormal event detection by real time and semi-real time multi-tasking video surveillance system

机译:实时和半实时多任务视频监控系统分层异常事件检测

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In this paper, we describe how to detect abnormal human activities taking place in an outdoor surveillance environment. Human tracks are provided in real time by the baseline video surveillance system. Given trajectory information, the event analysis module will attempt to determine whether or not a suspicious activity is currently being observed. However, due to real-time processing constrains, there might be false alarms generated by video image noise or non-human objects. It requires further intensive examination to filter out false event detections which can be processed in an off-line fashion. We propose a hierarchical abnormal event detection system that takes care of real time and semi-real time as multi-tasking. In low level task, a trajectory-based method processes trajectory data and detects abnormal events in real time. In high level task, an intensive video analysis algorithm checks whether the detected abnormal event is triggered by actual humans or not.
机译:在本文中,我们描述了如何检测在室外监视环境中发生的异常人类活动。基线视频监视系统实时提供人员跟踪。给定轨迹信息,事件分析模块将尝试确定当前是否正在观察可疑活动。但是,由于实时处理的限制,可能会由于视频图像噪声或非人为物体而产生虚假警报。它需要进一步的深入检查,以过滤出可以离线处理的错误事件检测。我们提出了一种分级的异常事件检测系统,该系统将实时和半实时作为多任务处理。在低级任务中,基于轨迹的方法处理轨迹数据并实时检测异常事件。在高级任务中,密集的视频分析算法会检查检测到的异常事件是否由实际人员触发。

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