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Computer Vision based License Plate Detection for Automated Vehicle Parking Management System

机译:基于计算机视觉自动化车辆停车管理系统的车牌检测

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摘要

With proliferation of vehicles across the world, it is getting increasingly strenuous to manage parking in several spaces viz business parks, residential complexes, shopping malls etc. An optimum utilization of available parking spaces and minimizing the time and effort involved in vehicle parking, an integrated and automated vehicle parking management system (VPMS) is necessitated. License plate contains relevant information about vehicle and its detection & recognition in real time can be utilized to develop an automated VPMS. In this paper, a solution is proposed for live detection and recognition of a moving vehicle's license plate number using Computer Vision techniques. Three different models had been studied viz HAAR cascade and CNN1, OpenCV2 and YOLOv3 with OpenCV3 to find the best performing model. Among these, YOLOv3 with OpenCV outperforms other models due to its ability to detect the rectangular bounding boxes with great accuracy. The automation of license plate detection is a two-step process which includes detection of custom object i.e License plate using YOLOv3 and recording/processing the number plate details using Open CV algorithms. The trained model is validated and demonstrated 100% accuracy in detection of license plate bounding boxes along with 95% accuracy in text recognition. This module can be implemented and integrated with other add-on systems for effective usage in various sectors.
机译:随着世界上的车辆的扩散,它越来越努力地管理在几个空间Viz商业园区,住宅区,购物中心等的停车场。最佳利用可用的停车位,最大限度地减少车辆停车场所涉及的时间和努力和自动化的车辆停车管理系统(VPMS)是必要的。牌照包含有关车辆的相关信息及其实时检测和识别可以使用自动VPMS。在本文中,提出了一种解决方案,用于使用计算机视觉技术实时检测和识别移动车辆的车牌号码。使用OpenCV3研究了三种不同的模型,并使用OpenCV3研究了CNN1,OpenCV2和Yolov3,以找到最佳的执行模型。其中,由于能够以极高的精度检测矩形边界盒的能力,YOLOV3具有OpenCV优于其他模型。牌照检测的自动化是一种两步过程,包括使用YOLOV3检测自定义对象I.E许可证板,并使用Open CV算法记录/处理号码板详细信息。经过训练的模型经过验证,并在检测牌照边界框中展示了100%的准确性,以及文本识别的95%的准确性。该模块可以实现并与其他附加系统集成,以便在各个扇区中使用其他附加系统。

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