Real-Time Vehicle Identification for Improving the Traffic Management system-A Review

None Sanjay S Tippannavar, None Yashwanth S D
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引用次数: 1

Abstract

Due to the increasing number of cars on the road and the exponential growth of traffic throughout the globe, regulating traffic has become crucial in the most industrialized countries. The development of technology has led to the current state of traffic management systems that comes with the ability to count, monitor, and predict the speed of vehicles in order to improve the transportation planning. This has also reduced the number of accidents that occur due to worsen traffic conditions. Road traffic surveys have been carried out manually for a long time since automated measures were not often employed due to the difficulty of installation. Machine learning in image processing is widely recognized as a significant approach for real-world applications such as traffic monitoring. The primary benefit of automated vehicle counting is that it allows for the management and evaluation of traffic in the urban transportation system. There are many methods employing distributed acoustic systems on intelligent transportation systems, including YOLO v4 and the Normalized Cross-correlation algorithm, which uses ultrasonic sensors and the algorithms ALPR, YOLO, GDPR, and CNN. The simplest method for identifying a vehicle is to gather information from sensors such as cameras, vibration detectors, ultrasound detectors, or acoustic detectors. These sensors are combined with the proper microcontrollers to determine the amount of traffic using the most recent data and theory. This review article is a quick reference for researchers working on safety-related traffic management systems.
改进交通管理系统的实时车辆识别技术综述
由于道路上的汽车数量不断增加,全球交通呈指数级增长,在大多数工业化国家,调节交通已变得至关重要。技术的发展导致了交通管理系统的现状,这些系统具有计算、监控和预测车辆速度的能力,以改善交通规划。这也减少了因交通状况恶化而发生的事故数量。长期以来,道路交通调查一直是人工进行的,因为安装困难,经常不采用自动测量方法。图像处理中的机器学习被广泛认为是现实世界中交通监控等应用的重要方法。自动车辆计数的主要好处是它允许对城市交通系统中的交通进行管理和评估。在智能交通系统中使用分布式声学系统的方法有很多,包括YOLO v4和归一化互相关算法,该算法使用超声波传感器和ALPR、YOLO、GDPR和CNN算法。识别车辆最简单的方法是从传感器收集信息,如摄像头、振动探测器、超声波探测器或声学探测器。这些传感器与适当的微控制器相结合,使用最新的数据和理论来确定交通量。这篇综述文章是研究安全相关交通管理系统的研究人员的快速参考。
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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