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首页> 外文期刊>Current Urban Studies >Tracking Individual Targets in High Density Crowd Scenes Analysis of a Video Recording in Hajj 2009
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Tracking Individual Targets in High Density Crowd Scenes Analysis of a Video Recording in Hajj 2009

机译:2009年朝Ha视频录制中高密度人群场景中的单个目标跟踪分析

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In this paper we present a number of methods (manual, semi-automatic and automatic) for tracking individual targets in high density crowd scenes where thousands of people are gathered. The necessary data about the motion of individuals and a lot of other physical information can be extracted from consecutive image sequences in different ways, including optical flow and block motion estimation. One of the famous methods for tracking moving objects is the block matching method. This way to estimate subject motion requires the specification of a comparison window which determines the scale of the estimate. In this work we present a real-time method for pedestrian recognition and tracking in sequences of high resolution images obtained by a stationary (high definition) camera located in different places on the Haram mosque in Mecca. The objective is to estimate pedestrian velocities as a function of the local density. The resulting data of tracking moving pedestrians based on video sequences are presented in the following section. Through the evaluated system the spatiotemporal coordinates of each pedestrian during the Tawaf ritual are established. The pilgrim velocities as function of the local densities in the Mataf area (Haram Mosque Mecca) are illustrated and very precisely documented. Tracking in such places where pedestrian density reaches 7 to 8 persons/m2 is extremely challenging due to the small number of pixels on the target, appearance ambiguity resulting from the dense packing, and severe inter-object occlusions. The tracking method which is outlined in this paper overcomes these challenges by using a virtual camera which is matched in position, rotation and focal length to the original camera in such a way that the features of the 3D-model match the feature position of the filmed mosque. In this model an individual feature has to be identified by eye, where contrast is a criterion. We do know that the pilgrims walk on a plane, and after matching the camera we also have the height of the plane in 3D-space from our 3D-model. A point object is placed at the position of a selected pedestrian. During the animation we set multiple animation-keys (approximately every 25 to 50 frames which equals 1 to 2 seconds) for the position, such that the position of the point and the pedestrian overlay nearly at every time. By combining all these variables with the available appearance information, we are able to track individual targets in high density crowds.
机译:在本文中,我们提出了许多方法(手动,半自动和自动),用于在聚集数千人的高密度人群场景中跟踪单个目标。关于个体运动的必要数据和许多其他物理信息可以采用不同方式从连续图像序列中提取,包括光流和块运动估计。跟踪运动物体的著名方法之一是块匹配方法。这种估计对象运动的方式需要指定比较窗口,该比较窗口确定估计的比例。在这项工作中,我们提出了一种实时方法,用于通过位于麦加哈拉姆清真寺不同位置的固定(高清晰度)相机获得的高分辨率图像序列中的行人识别和跟踪。目的是估计行人速度与局部密度的关系。下节介绍了基于视频序列跟踪行人的结果数据。通过评估系统,建立了塔瓦夫仪式期间每个行人的时空坐标。图示并非常精确地记录了朝圣速度与Mataf地区(圣地麦加圣地)当地密度的关系。在行人密度达到7到8人/平方米的地方进行跟踪非常具有挑战性,这是因为目标上的像素数量少,由于密集的包装而导致的外观模糊以及严重的物体间遮挡。本文概述的跟踪方法通过使用虚拟摄像机克服了这些挑战,该虚拟摄像机的位置,旋转和焦距与原始摄像机相匹配,从而使3D模型的特征与所拍摄影片的特征位置相匹配清真寺。在该模型中,必须以肉眼识别单个特征,其中对比度是标准。我们确实知道朝圣者在飞机上行走,并且在匹配摄像机之后,我们还可以从3D模型获得3D空间中飞机的高度。将点对象放置在选定行人的位置。在动画过程中,我们为该位置设置了多个动画键(大约每25到50帧,相当于1到2秒),以使该点和行人的位置几乎每次都重叠。通过将所有这些变量与可用的外观信息结合起来,我们可以跟踪高密度人群中的单个目标。

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