License plate recognition system based on contour properties and deep learning model

Md. Zainal Abedin, Atul Chandra Nath, Prashengit Dhar, K. Deb, Mohammad Shahadat Hossain
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引用次数: 35

Abstract

The intent of this research is to design a license plate recognition (LPR) system in the domain of Bangla language for smart vehicle management. The proposed system is designed on the basis of computer vision tools and deep supervised machine learning model. The system has three modules: license plate detection, character segmentation and recognition of the characters of the License Plate (LP). The goal of detection is to localize the plate area from the vehicle image and to crop region of interest (LP). It is executed by applying following process: preprocessing the image, conversion to binary image, contour detection and filtering the contours to get the LP's character contours, tilt correction and cropping the plate area from the image. Then, the cropped LP is segmented to extract the characters from the plate. Finally, the recognition step classifies the characters by means of deep convolution neural network where the features of the character are crafted and learned by the convolution layers of the networks. The system is implemented in Python OpenCV environment for offline car license plates images which are taken in different illuminations, road scenarios and colored cars. The system performance is evaluated in terms of detection rate, segmentation rate, recognition rate and execution time. The results illustrate that the performance of the system is remarkable.
基于轮廓属性和深度学习模型的车牌识别系统
本研究的目的是设计一个孟加拉语领域的车牌识别(LPR)系统,用于智能车辆管理。该系统是基于计算机视觉工具和深度监督机器学习模型设计的。该系统分为三个模块:车牌检测、字符分割和车牌字符识别(LP)。检测的目标是从车辆图像中定位车牌区域并裁剪感兴趣区域(LP)。通过对图像进行预处理,转换为二值图像,对轮廓进行检测和滤波,得到LP的特征轮廓,对图像进行倾斜校正,对板材区域进行裁剪。然后,对裁剪后的LP进行分割,从印版中提取字符。最后,识别步骤采用深度卷积神经网络对字符进行分类,通过网络的卷积层对字符的特征进行加工和学习。该系统在Python OpenCV环境下实现,用于在不同照明,道路场景和彩色汽车中拍摄的离线汽车牌照图像。从检测率、分割率、识别率和执行时间等方面对系统性能进行了评价。结果表明,该系统的性能是显著的。
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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