基于固定摄像机视频监控的道路和十字路口交通分析

Saameh G. Ebrahimi, Nima SeifNaraghi, E. Ince
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引用次数: 7

摘要

基于自适应高斯混合建模,本文介绍了前景对象从道路和/或十字路口拍摄的监控视频帧的分离。本文还描述了一种确定交叉口专用路段的车道满度的方法。为了给出准确的丰满度测量,必须消除可能出现在分割前景中的阴影。在本研究中,使用HSV色彩空间进行阴影的检测和去除。采用pet 2001数据库中的Camera 1序列和TRNC-Famagusta数据库中记录的自定义序列进行模拟。提出了一种计算交叉口各支路左右车道满度的新方法,并将计算值记录在所研究框架的左下角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic analysis of avenues and intersections based on video surveillance from fixed video cameras
Based on adaptive Gaussian mixture modelling this article presents the separation of foreground objects from frames of surveillance video taken at avenues and/or intersections. The paper also describes an approach for determining the lane fullness of a dedicated leg of an intersection. In order to give an accurate fullness measure the cast shadows that might be present in the segmented foregrounds must be eliminated. In this study the detection and removal of shadows have been carried out using the HSV color space. The simulations were carried out using the Camera 1 sequence from PETS 2001 database and a custom sequence recorded in TRNC-Famagusta. A new method for computing right and left lane fullness in each leg of the intersection has been proposed and values computed have been recorded on the bottom left corner of the frame under study.
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