Analysis of traffic flow in urban areas using web cameras

S. Santini
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引用次数: 29

Abstract

With the development of the Internet and the omnipresence of video cameras, the amount of visual information available to individuals with access to the world wide web has increased by orders of magnitude in the last few years. Due to cost and communication constraints, this information is usually of rather low quality. The cooccurrence of a large number of sensors and the low quality of every single sensor has the potential to create a new episteme in computer vision. This paper presents an example of how certain limitations of a single sensor can be overcome by using the sensor multiplicity. Using a number of web cameras available in the Seattle area, the paper performs first a simple qualitative traffic analysis from each single camera. Since the cameras provide images at a very low rate (1 image every 2 minutes), standard techniques based on motion detection are unusable, and the paper proposes a simple approach based on image variance. Then, the data are integrated using the structure of the Seattle highway system and network tomography to determine the major flows of traffic at different times of the day.
基于网络摄像头的城市交通流分析
随着互联网的发展和摄像机的无处不在,在过去的几年里,通过访问万维网,个人可以获得的视觉信息的数量已经成倍增加。由于成本和沟通的限制,这些信息的质量通常很低。大量传感器的共存和单个传感器的低质量有可能在计算机视觉中创造一个新的认知。本文给出了一个例子,说明如何通过使用传感器多样性来克服单个传感器的某些限制。利用西雅图地区的一些网络摄像头,本文首先对每个摄像头进行了简单的定性交通分析。由于摄像机提供图像的速率非常低(每2分钟1张图像),基于运动检测的标准技术无法使用,本文提出了一种基于图像方差的简单方法。然后,使用西雅图高速公路系统的结构和网络断层扫描来整合数据,以确定一天中不同时间的主要交通流量。
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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