A Comparison Between the Use of CNN and Matching Templates in Recognizing the Iraqi License Plate Number

Shayma A. Hmdaoy, Hanaa M. Ahmed
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Abstract

One of the important applications that organize people's lives is the applications that relate to organizing the traffic regulation, detecting violators, detecting stolen cars, and managing car parks. Recognizing the license plate number (LPN) crosses the basic process in all previous applications. This process is affected by the surrounding light conditions while taking an image of the car. In addition to these problems, the plates of modern Iraqi cars (the so-called German number) suffer from words in silver color printed on the plate, which causes a senior problem when locating the LPN and recognizing it. To solve these problems, we presented in this research a comparison between the use of the SIFT and Contour algorithm in locating the LPN. While using CNN training models to recognize the PN achieved higher results than template matching.
使用CNN和匹配模板识别伊拉克车牌号码的比较
组织交通管理、违规者检测、被盗车辆检测、停车场管理等应用是组织人们生活的重要应用之一。识别车牌号码(LPN)跨越了以前所有应用程序的基本过程。在拍摄汽车图像时,这个过程受到周围光线条件的影响。除了这些问题外,现代伊拉克汽车的车牌号(所谓的德国车牌号)的车牌号上印着银色的文字,这在定位和识别LPN时造成了一个严重的问题。为了解决这些问题,我们在本研究中提出了使用SIFT和轮廓算法定位LPN的比较。而使用CNN训练模型识别PN的效果要优于模板匹配。
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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