Detection of entry and exit zones in image sequences for automatic traffic analysis

K. Intawong, Mihaela Scuturici, S. Miguet
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引用次数: 2

Abstract

This paper is placed in the context of video traffic analysis. Typically, hundreds of cameras installed in cities produce a very large amount of data, impossible to handle without automatic processing. For helping traffic controllers to take their decisions, it is important to know in real time, the state of the traffic (number and speed of vehicles on each track segment) but also to have temporal statistics of these measures throughout the day, the week or the year. We can obtain such information by detection and tracking of moving objects in videos, which is a widely studied domain. Nevertheless, most of the automatic video analysis systems face many difficulties: occlusions, variation of the apparent size of objects, illumination changes, etc. In these difficult cases, traditional methods provide only partial trajectories of objects. Rather than trying to make these systems more robust for individual tracking, we propose to aggregate the partial data to build global information on the flow of vehicles in the scene. Specifically, we propose a method which, at first, automatically identifies input Ei and output Xj areas in the scene. Secondly, for each pair Ei, Xj, we record the number ni,j of vehicles that enter the scene in Ei and leave it in Xj.
用于自动交通分析的图像序列的入口和出口区域检测
本文是在视频流量分析的背景下进行的。通常,城市中安装的数百个摄像头会产生大量数据,如果没有自动处理,这些数据是无法处理的。为了帮助交通管制员做出决策,实时了解交通状况(每个轨道段上的车辆数量和速度)非常重要,同时也需要掌握这些措施在一天、一周或一年中的时间统计数据。我们可以通过对视频中运动物体的检测和跟踪来获取这些信息,这是一个被广泛研究的领域。然而,大多数自动视频分析系统都面临着许多困难:遮挡、物体视尺寸变化、光照变化等。在这些困难的情况下,传统的方法只能提供物体的部分轨迹。而不是试图使这些系统更强大的单个跟踪,我们建议汇总部分数据,以建立在场景中车辆流的全局信息。具体来说,我们首先提出了一种自动识别场景中输入Ei和输出Xj区域的方法。其次,对于每一对Ei, Xj,我们记录在Ei中进入场景并在Xj中离开的车辆数量ni,j。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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