Vehicle Detection and Classification using Image processing

R. Chandrika, N. Ganesh, A. Mummoorthy, K. Raghunath
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引用次数: 6

Abstract

The number of vehicles has increased tremendously over the past decade. There are over 1 billion active vehicles all over the world and 60 to 70 million vehicles in India. Managing such traffic moments, providing sufficient parking lots is not an easy task. Vehicle counting and classification on busy streets will help the authorities to obtain traffic flow statistics and help them to understand and study the traffic patterns so that the can manage traffic in the most efficient way. The paper presents a way to detect, count and classify vehicles using image processing techniques. Although there has been a significant amount of research related to this, there is always a scope of improvement. The task of vehicle detection and counting is broken down into six steps: 1) Image Acquisition, 2) Image Analysis, 3) Object detection, 4) Counting, 5) Classification, 6) Display result. The algorithms which will be used to perform these tasks will includes vehicle detection and counting algorithm and road marking detection algorithm. This can also be used to monitor high ways, detect accidents, unrighteous stoppage of vehicles on roads, the traffic rules violators. Classification of vehicles will be done in one of the following categories: a) Bicycles and motorcycles, b) motor cars, c) minibus and pickup vans, d) buses trailers, trucks. This data will help to figure out the priority and maximum users of a road and design traffic patterns that will be beneficial to maximum.
基于图像处理的车辆检测与分类
在过去的十年里,车辆的数量急剧增加。全世界有超过10亿辆现役车辆,印度有6000万到7000万辆。管理这样的交通时刻,提供足够的停车场不是一件容易的事。在繁忙的街道上进行车辆计数和分类,将有助于当局获得交通流量统计数据,帮助他们了解和研究交通模式,以便最有效地管理交通。本文提出了一种利用图像处理技术对车辆进行检测、计数和分类的方法。虽然已经有大量的研究与此相关,但总有一个改进的范围。车辆检测与计数任务分为6个步骤:1)图像采集,2)图像分析,3)目标检测,4)计数,5)分类,6)显示结果。将用于执行这些任务的算法将包括车辆检测和计数算法以及道路标记检测算法。这也可以用来监控高速公路,检测事故,不正当的车辆停在道路上,交通规则的违规者。车辆的分类将在以下类别之一:a)自行车和摩托车,b)汽车,c)小巴和皮卡车,d)公共汽车,拖车,卡车。这些数据将有助于确定道路的优先级和最大用户,并设计有利于最大用户的交通模式。
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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