基于视频序列的交通监控系统移动车辆检测

J. JencyRubia, R. BabithaLincy, Ahmed Thair Al-Heety
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引用次数: 13

摘要

在当前的场景中,智能交通系统在智慧城市平台中扮演着重要的角色。基于视频序列的移动车辆自动检测是自动交通管理系统的核心组成部分。人类可以很容易地在一瞬间从复杂的场景中检测和识别物体。然而,将这种思维过程转化为机器,需要我们学习使用计算机视觉算法检测物体的艺术。本文用智能自动交通系统解决了城市交通问题。本文包括基于blob分析的车辆自动计数,基于动态自回归移动平均模型的背景减除,基于边界块检测算法的运动目标识别,以及车辆跟踪。本文分析了基于视频的交通拥堵系统的实现过程,将其分为灰度化、二值化、去噪和运动目标检测四个部分。调查结果表明,该系统可以为交通监控提供有用的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Moving vehicle detection from video sequences for Traffic Surveillance System
In the current scenario, Intelligent Transportation Systems play a significant role in smart city platform. Automatic moving vehicle detection from video sequences is the core component of the automated traffic management system. Humans can easily detect and recognize objects from complex scenes in a flash. Translating that thought process to a machine, however, requires us to learn the art of object detection using computer vision algorithms. This paper solves the traffic issues of the urban areas with an intelligent automatic transportation system. This paper includes automatic vehicle counting with the help of blob analysis, background subtraction with the use of a dynamic autoregressive moving average model, identify the moving objects with the help of a Boundary block detection algorithm, and tracking the vehicle. This paper analyses the procedure of a video-based traffic congestion system and divides it into greying, binarisation, de-nosing, and moving target detection. The investigational results show that the planned system can provide useful information for traffic surveillance.
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