AUTOMATICS NUMBER PLATE RECOGNITION USING CONVOLUTION NEURAL NETWORK

S. Roy
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引用次数: 2

Abstract

In the last few years, Automatic Number Plate Recognition (ANPR) systems have become widely used for security, safety, and also commercial aspects such as parking control access, and legal steps for the red light violation, highway speed detection, and stolen vehicle detection. The license plate of any vehicle contains a number of numeric characters recognized by the computer. Each country in the world has specific characteristics of the license plate. Due to rapid development in the information system field, the previous manual license plate number writing process in the database is replaced by special intelligent device in a real-time environment. Several approaches and techniques are exploited to achieve better systems accuracy and real-time execution. It is a process of recognizing number plates using Optical Character Recognition (OCR) on images. This paper proposes a deep learning-based approach to detect and identify the Indian number plate automatically. It is based on new computer vision algorithms of both number plate detection and character segmentation. The training needs several images to obtain greater accuracy. Initially, we have developed a training set database by training different segmented characters. Several tests were done by varying the Epoch value to observe the change of accuracy. The accuracy is more than 95% that presents an acceptable value compared to related works, which is quite satisfactory and recognizes the blurred number plate.
基于卷积神经网络的车牌自动识别
在过去的几年里,自动车牌识别(ANPR)系统已经广泛应用于安保、安全以及商业方面,如停车控制通道、红灯违章的法律步骤、高速公路速度检测和被盗车辆检测。任何车辆的车牌都包含一些可被计算机识别的数字字符。世界上每个国家的车牌都有特定的特点。由于信息系统领域的快速发展,以前在数据库中手工写车牌号码的过程被实时环境下的专用智能设备所取代。利用几种方法和技术来实现更好的系统准确性和实时执行。车牌识别是利用光学字符识别(OCR)对图像进行车牌识别的过程。本文提出了一种基于深度学习的印度车牌自动检测与识别方法。它是基于新的计算机视觉算法的车牌检测和字符分割。训练需要多个图像以获得更高的精度。首先,我们通过训练不同的分割字符开发了一个训练集数据库。通过改变Epoch值进行了几次测试,观察精度的变化。准确率在95%以上,与相关作品相比是一个可以接受的值,这是相当令人满意的,并识别了模糊的车牌。
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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