基于单通道连通元件标记和在位属性函数的改进车牌自动识别系统

Rohollah Mazrae Khoshki, S. Ganesan
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引用次数: 9

摘要

提出了一种改进的基于单道连接元件标签的车牌自动识别系统。本研究描述了一种能够在不同条件下识别车牌的ALPR系统,这些条件包括与摄像头的距离、摄像头与车辆的旋转角度(0°到+/-45°)以及光照对比度较差的条件(不同天气条件、不同光照条件、车牌物理倾斜或损坏)。该方法采用自适应阈值滤波对预处理步骤进行各种条件下的图像增强,并在此基础上利用改进的单道连通分量标记和区域属性函数来寻找车牌的位置和特征,与其他方法相比,该方法快速准确。我们根据合适的字符大小、宽高比、距离和连通性来确定车牌字符和位置。最后利用光学字符识别技术(OCR)对车牌进行识别。图像结果表明了该方法的准确性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Automatic License Plate Recognition (ALPR) system based on single pass Connected Component Labeling (CCL) and reign property function
This paper presents improved Automatic License Plate Recognition (ALPR) system based on Single Pass Connected Component Labeling (CCL). This research describes an ALPR system which is capable of distinguishing license plates under various conditions, such as distance from the camera, rotation angle between camera and vehicle (0° to +/-45°) and also poor illumination contrast condition (different weather condition, different lighting condition and physical tilted or damage of license plate). In our method, we apply adaptive thresholding filter to preprocessing step for image enhancement under various conditions, and then to find the location and characters of license plate at the same time we apply improved single pass Connected Component Labeling and regio property function that compared with other methods is fast and accurate. We determine the license plate characters and location according to appropriate size, aspect ratio, distance and connectivity of characters. Finally by using Optical Character Recognition (OCR) we find the characters on each license plate in an image. Image results show the accuracy and reliability of this method.
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