基于径向基函数神经网络的车牌识别算法

Bo Li, Zhi-yuan Zeng, Jian-zhong Zhou, Hua-li Dong
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引用次数: 20

摘要

基于多种车牌(LP)的共享特征,首先利用Sobel边缘检测器检测车牌的垂直边缘;然后,根据边缘灰度跳变和边缘密度的特点,采用一些方法去除无效边缘,使具有LP特征的区域得以保留;然后,通过水平和垂直投影和数学形态学(MM)运算,搜索LP区域。然后,通过颜色分析进行颜色反转判断,并基于LP的核心区域进行二值化。然后,利用先验知识和连通分量分析对字符进行分割,并基于径向基函数(RBF)神经网络进行字符识别。在夜间和白天的实际条件下进行了大量的样本验证,实验表明,将该算法应用于车牌识别系统(LPRS)是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Algorithm for License Plate Recognition Using Radial Basis Function Neural Network
Based on the sharing features of a variety of license plates (LP), the vertical edge was first detected by Sobel edge detector. Then, some approaches were adopted to remove the invalid edge regarding the characteristics of edge grayscale jump and edge density, so that the regions having features of LP were preserved. Next, by horizontal and vertical projections and mathematical morphology (MM) operation, the LP region was searched. Then, color-reversing judgement was conducted by color analysis, and binarization was done based on core region in LP. Afterward, characters were segmented by means of prior knowledge and connected components analysis, and character recognition was conducted based on radial basis function (RBF) neural network. With abundant samples verified in dark hours and daytime under real conditions, the experiment indicates that it is feasible to adopt this algorithm in license plate recognition system (LPRS) to achieve accuracy.
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