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A Survey on Behavior Analysis in Video Surveillance for Homeland Security Applications

机译:国土安全应用视频监控中的行为分析调查

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Surveillance cameras are inexpensive and everywhere these days but the manpower required to monitor and analyze them is expensive. Consequently the videos from these cameras are usually monitored sparingly or not at all; they are often used merely as archive, to refer back to once an incident is known to have taken place. Surveillance cameras can be a far more useful tool if instead of passively recording footage, they can be used to detect events requiring attention as they happen, and take action in real time. This is the goal of automated visual surveillance: to obtain a description of what is happening in a monitored area, and then to take appropriate action based on that interpretation. Video surveillance for humans is one of the most active research topics in computer vision. It has a wide spectrum of promising homeland security applications. Video management and interpretation systems have become quite capable in recent years. This paper looks into how hardware and software can be put together to solve surveillance problems in an age of increased concern with public safety and security. In general, the framework of a video surveillance system includes the following stages: modeling of environments, detection of motion, classification of moving objects, tracking, behavior understanding and description, and fusion of information from multiple cameras. Despite recent progress in computer vision and other related areas, there are still major technical challenges to be overcome before reliable automated video surveillance can be realized. This paper reviews developments and general strategies of stages involved in video surveillance, and analyzes the feasibility and challenges for combining motion analysis, behavior analysis, and standoff biometrics for identification of known suspects, anomaly detection, and behavior understanding.
机译:监控摄像机廉价且这些天无处不在,但要监控和分析它们所需的人力是昂贵的。因此,这些摄像机的视频通常会谨慎监控;它们通常仅作为存档使用,以便在已知发生事件中进行事件。如果不是被动录制的镜头,监控摄像机可能是一个更有用的工具,它们可用于检测需要注意的事件,并实时采取行动。这是自动视觉监视的目标:获取对受监控区域发生的事情的描述,然后根据该解释采取适当的动作。人类的视频监控是计算机视觉中最活跃的研究主题之一。它具有广泛的承诺安全应用。近年来,视频管理和解释系统变得非常有能力。本文展望了硬件和软件如何组合在一起,以解决高度涉及公共安全和安全的时代的监测问题。通常,视频监控系统的框架包括以下阶段:环境建模,运动检测,移动物体的分类,跟踪,行为理解和描述以及来自多个摄像机的信息的融合。尽管最近在计算机视觉和其他相关领域进展,但在可靠的自动化视频监控之前,仍有主要的技术挑战可以实现。本文介绍了视频监控所涉及的阶段的发展和一般策略,并分析了用于识别已知的嫌疑人,异常检测和行为理解的运动分析,行为分析和支出生物识别性的可行性和挑战。

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