Region and feature matching based vehicle tracking for accident detection

Abhinav Saini, S. Suregaonkar, Neena Gupta, V. Karar, Shashi Poddar
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引用次数: 6

Abstract

Intelligent traffic monitoring using video surveillance is one of the most important aspects in administering a modern smart city. A recent growth towards machine learning and computer vision techniques has provided an added impetus towards this growth. In this paper, an image processing based vehicle tracking technique is developed that does not require background subtraction process to be applied for extracting the region of interest. Instead, a hybrid of feature detection and region matching approach is suggested in this article, which helps in estimating vehicle trajectory over consequent frames. Later, the tracked path is monitored for the occurrence of any specific event while the vehicle passes through an intersection. The proposed scheme is found to work promisingly on the real world dataset and is able to detect the occurrence of an accident between two vehicles.
基于区域和特征匹配的车辆跟踪事故检测
基于视频监控的智能交通监控是管理现代智慧城市的重要方面之一。最近机器学习和计算机视觉技术的发展为这一增长提供了额外的动力。本文提出了一种基于图像处理的车辆跟踪技术,该技术不需要使用背景减除处理来提取感兴趣区域。相反,本文提出了一种混合特征检测和区域匹配方法,这有助于估计后续帧上的车辆轨迹。随后,当车辆通过十字路口时,跟踪的路径将被监控是否发生任何特定事件。该方案在实际数据集上工作良好,能够检测两辆车之间发生的事故。
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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