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License Plate Recognition: A Comparative Study on Thresholding, OCR and Machine Learning Approaches

机译:牌照识别:对阈值,OCR和机器学习方法的比较研究

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License Plate Recognition (LPR) aims to locate and extract vehicle plate information captures from images or videos. In this paper our objective is to bring forth a comparison based upon the considerations like average accuracy, precision and recall between algorithms according to threshold values, character recognition. The system thus formulated captures real-time input image. It identifies the license plate from extracted image. The work presented in this paper mainly focuses on classification and recognition of characters using Viola Jones Machine learning algorithm. LPR is the most interesting and challenging area of research due to its importance to a wide range of commercial applications, ranging from automated payment services (e.g. Parking and toll roads payment collection), traffic related applications such as road traffic monitoring, searching of stolen vehicles, airport gate monitoring, speed monitoring for more critical applications, to border crossing security and traffic surveillance systems.
机译:许可证板识别(LPR)旨在定位和提取从图像或视频捕获的车辆信息。在本文中,我们的目标是根据平均准确性,根据阈值,字符识别的算法之间的考虑来提出比较的比较。因此,系统制定了捕获实时输入图像。它识别来自提取图像的牌照。本文提出的工作主要侧重于使用Viola Jones机器学习算法的字符分类和识别。 LPR是最有趣和最具挑战性的研究领域,因为它对各种商业应用的重要性,从自动支付服务(例如停车场和收费公路支付收集),交通相关应用,如道路交通监控,搜索被盗车辆,机场门监控,速度监测更多关键应用,以交通安全和流量监控系统。

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