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基于SVM的车牌字符分割和识别方法
引用本文:高珊,刘万春,朱玉文.基于SVM的车牌字符分割和识别方法[J].微电子学与计算机,2005,22(6):34-36.
作者姓名:高珊  刘万春  朱玉文
作者单位:北京理工大学信息科学技术学院计算机科学工程系,北京,100081
摘    要:文章研究了车牌识别系统中的字符分割和识别技术.提出一种投影法粗分割结合先验知识后处理的字符分割方法,该方法简单、容易实现,取得了很好的分割效果.对于字符识别,本文采用SVM(Support Vector Ma-chine)方法,并根据车牌字符特征将子分类器分为四组,提高了识别率、缩短了训练时间,实验表明,用该方法识别车牌字符具有较高的识别率和识别速度,并避免了神经网络局部极值等问题.

关 键 词:字符分割  字符识别  BP神经网络
文章编号:1000-7180(2005)06-034-03
修稿时间:2004年11月24

License Plate Character Segmentation and Recognition Methods Based on SVM
GAO Shan,LIU Wan-chun,ZHU Yu-wen.License Plate Character Segmentation and Recognition Methods Based on SVM[J].Microelectronics & Computer,2005,22(6):34-36.
Authors:GAO Shan  LIU Wan-chun  ZHU Yu-wen
Abstract:This paper mainly researches on character segmentation and recognition techniques which are used in license plate recognition system. A character segmentation method which uses projection to segment primarily then combine with apriori knowledge to dispose behind is proposed. This method is simple, easy to implement, and have a good effect. For character recognition, this paper applies SVM (Support Vector Machine) method, Sub-classifiers are divided into four groups to improve recognition accuracy and shorten training time. Experimental results demonstrate that using this method to recognise license plate characters can get a high recognition accuracy and speed, moreover, it avoids the local extremum problem existed in neural network.
Keywords:SVM
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