基于人群密度估计的模糊推理系统在监控CCTV中的注意力控制

F. Tehranipour, R. Shishegar, Soheil Tehranipour, S. Setarehdan
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引用次数: 4

摘要

机器视觉中的一个重要问题是使用自动注意力控制方法来监控闭路电视摄像机,以增强公共场所人们的安全。人群密度估计等自动方法的结果可以在风险概率增加的情况下提醒操作人员。为了正确控制操作者的注意力,除了整体人群密度外,还需要考虑区域人群密度、视频每帧的时空标准等参数。为此,根据人群密度和风险概率在每天小时内的逐渐变化,以及我们对拥挤场所评价知识的不确定性,设计了一个模糊决策系统,对风险概率进行决策。这个系统的设计是基于这样一个事实,即人类的视觉系统倾向于将注意力集中在低概率发生的事件上。通过实际数据验证了该系统的有效性,并给出了该系统辅助人工操作的实际应用结果。
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Attention control using fuzzy inference system in monitoring CCTV based on crowd density estimation
One important issue in machine vision is using automatic attention control methods for monitoring CCTV cameras, in order to enhance the security of people in public. Result of automatic methods such as crowd density estimation can alert the operator in the case of risk probability increasing. In addition to overall crowd density, other parameters such as regional crowd density and the temporal and spatial criteria of each frame of video should be considered to control the operator's attention correctly. For this purpose, according to the gradual change of crowd density and risk probability in daily hours and uncertainty in our knowledge in evaluation of crowded places, we designed a fuzzy decision making system to make decisions about risk probability. The design of this system is based on the fact that the human visual system tends to direct attention to events that happen with low probability. The efficiency of this system is tested on real data and results are presented to demonstrate the practical applications of this system to aid the human operator.
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