首页> 外文会议>Conference on Image Processing: Machine Vision Applications; 20080129-31; San Jose,CA(US) >Unusual behavior detection in the entry gate scenes of subway station using Bayesian networks and inference
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Unusual behavior detection in the entry gate scenes of subway station using Bayesian networks and inference

机译:基于贝叶斯网络和推理的地铁车站出入口场景异常行为检测

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In this paper, we propose a method for detecting unusual human behavior using monocular camera which is not moving. Our system composed of three modules which are moving object detection, tracking, and event recognition. The key part is event recognition module. We define unusual events which are composed of two simple events (drop off luggage, unattended luggage) and two complex events (abandoned luggage and steal luggage). In order to detect the simple event, we construct Bayesian network in each unusual event. We extract evidences using bounding box properties which are the location of moving objects, speed, distance between the person and the other moving object (such as bag), existing time. And then, we use finite state automaton which shows the temporal relation of two simple events to detect complex events. To evaluate the performance, we compare the frame number when an even is triggered with our results and the ground truth. The proposed algorithm showed good results on the real world environment and also worked at real time speed.
机译:在本文中,我们提出了一种使用不动的单眼相机检测异常人类行为的方法。我们的系统由三个模块组成,分别是运动对象检测,跟踪和事件识别。关键部分是事件识别模块。我们定义了不寻常事件,该事件由两个简单事件(放下行李,无人看管的行李)和两个复杂事件(被遗弃的行李和偷窃行李)组成。为了检测简单事件,我们在每个异常事件中构造贝叶斯网络。我们使用边界框属性提取证据,这些属性包括移动物体的位置,速度,人与另一个移动物体(例如包)之间的距离,现有时间。然后,我们使用有限状态自动机显示两个简单事件的时间关系来检测复杂事件。为了评估性能,我们将偶数触发时的帧数与我们的结果和基本事实进行比较。所提出的算法在现实环境中显示出良好的效果,并且可以实时运行。

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