对峙视频分析,用于检测车辆中的安全异常

S. Srivastava, E. Delp
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引用次数: 9

摘要

视频监控系统通常被安全人员用于监控和记录建筑物、公共集会、繁忙的道路和停车场的活动。这些系统允许少量训练有素的操作人员观察许多摄像机,但由于摄像机提供的大量信息可能分散操作人员对重要事件的注意力,因此存在潜在的操作人员疲劳和缺乏注意力的问题。在本文中,我们提出了一种自主视频监控系统的设计,该系统可以在对峙范围内运行,分析接近的车辆以检测安全异常。根据车辆轨迹的动态分析,这些异常情况包括意外减速/停止或突然加速,特别是在检查站或关键建筑物(例如政府大楼)附近。当检测到重大事件时,可以向人类主管发出警报,然后决定是否应该进一步检查车辆。除了动态分析,该系统还可以估计车辆的物理信息,如品牌、车身类型和轮胎尺寸。我们描述了从两个摄像机获取上述信息的低复杂度技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Standoff video analysis for the detection of security anomalies in vehicles
Video surveillance systems are commonly used by security personnel to monitor and record activity in buildings, public gatherings, busy roads, and parking lots. These systems allow many cameras to be observed by a small number of trained human operators but suffer from potential operator fatigue and lack of attention due to the large amount of information provided by cameras which can distract the operator from focusing on important events. In this paper, we propose the design of an autonomous video surveillance system which can operate from a standoff range that analyzes approaching vehicles in order to detect security anomalies. Such anomalies, based on dynamic analysis of the vehicle tracks, include unexpected slowing/stopping or sudden acceleration, particularly near check points or critical structures (e.g. government buildings). A human supervisor can be alerted whenever a significant event is detected and can then determine if the vehicle should be further inspected. Besides dynamic analysis, the system also estimates physical information about the vehicles such as make, body type and tire size. We describe low-complexity techniques to obtain the above information from two cameras.
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