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基于Pseudo-Zernike不变矩的PNN车牌汉字识别
引用本文:高全华,王晋国,孙锋利.基于Pseudo-Zernike不变矩的PNN车牌汉字识别[J].计算机工程,2009,35(4):196-198.
作者姓名:高全华  王晋国  孙锋利
作者单位:1. 长安大学理学院,西安,710064
2. 西北工业大学电子信息学院,西安,710077
摘    要:基于不变矩理论,提出一种应用概率神经网络作为识别器的车牌汉字识别技术。利用Pseudo—Zernike矩特征的旋转不变性和良好的抗噪性能,将其作为车牌汉字识别的特征矢量,结合Pseudo—Zemike矩的快速算法和概率神经网络识别器快速学习和识别的性能,可适应实时环境下所获取的车牌汉字灰度图像的识别,具有较高的准确率,实验结果表明了该方法的有效性。

关 键 词:车牌识别  Pseudo—Zernike不变矩  概率神经网络
修稿时间: 

PNN Recognition of License Plate Chinese Characters Based on Pseudo-Zernike Invariant Moments
GAO Quan-hua,WANG Jin-guo,SUN Feng-li.PNN Recognition of License Plate Chinese Characters Based on Pseudo-Zernike Invariant Moments[J].Computer Engineering,2009,35(4):196-198.
Authors:GAO Quan-hua  WANG Jin-guo  SUN Feng-li
Affiliation:GAO Quan-hua1,WANG Jin-guo1,SUN Feng-li2
Abstract:This paper presents a novel approach based on Pseudo-Zernike Invariant Moments(PZIM) and Probabilistic Neural Network(PNN) to recognize license plate Chinese characters.The approach makes better use of the rotation invariant and good anti-noise performance of Pseudo-Zernike moments and quick learning rate of PNN,and thus provides a real-time recognition of gray character images by utilizing Pseudo-Zernike moments as feature vectors and Probabilistic Neural Network as classifier.Numeral experiment confirms t...
Keywords:license plate recognition  Pseudo-Zernike Invariant Moments(PZIM)  Probabilistic Neural Network(PNN)
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