Bangladeshi License Plate Detection and Recognition with Morphological Operation and Convolution Neural Network

G. Rabbani, M. Aminul Islam, Muhammad Anwarul Azim, Mohammad Khairul Islam, Md. Mostafizur Rahman
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引用次数: 20

Abstract

In today's world automatic license plate recognition play an important role in monitoring and organizing vehicles. In this paper, we propose a method of detecting and recognizing the license plates of vehicles in an automatic way in our country. The system can be used to collect toll, in car parking and find stolen vehicles. We have used different image processing techniques like resizing image, image binarization, connected component analysis, image enhancement and noise filtering. Our system is composed of four main modules, such as detection of the license plate area, extraction of license plate. Then, segmentation of characters and words and finally recognition of the characters and words. As Bangladesh Road Transport Authority (BRTA) imposed a common standard for vehicle license plate, the size and aspect ratio of all license plates are same. We have used a threshold value to detect and extract the license plate based on our analysis. Afterward, for character segmentation, we used connected components. Later, we used deep learning tool ‘the Convolutional Neural Network’ for character recognition. Due to the lack of a standard data set, we have developed a customized dataset of Bangladeshi number plate for the implementation of our method. The accuracy of our proposed system is 95.42%.
基于形态学运算和卷积神经网络的孟加拉车牌检测与识别
在当今世界,车牌自动识别在车辆的监控和组织中发挥着重要的作用。本文提出了一种我国车辆车牌自动检测与识别的方法。该系统可用于收取通行费,在停车场和寻找被盗车辆。我们使用了不同的图像处理技术,如图像大小调整,图像二值化,连接分量分析,图像增强和噪声滤波。本系统主要由车牌面积检测、车牌提取四个主要模块组成。然后进行字词分割,最后进行字词识别。由于孟加拉国道路运输管理局(BRTA)对车辆车牌实行统一标准,所有车牌的尺寸和宽高比都是相同的。我们在分析的基础上使用阈值来检测和提取车牌。之后,对于字符分割,我们使用连接组件。后来,我们使用深度学习工具“卷积神经网络”进行字符识别。由于缺乏标准数据集,我们开发了一个定制的孟加拉国车牌数据集来实施我们的方法。该系统的准确率为95.42%。
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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