复杂情况下优化的车牌识别系统

Jianing Qiu, Naida Zhu, Yi Wei, Xiaoqing Yu
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引用次数: 6

摘要

本文对传统的车牌识别系统(LPRS)进行了优化,针对原有的不足之处,提出了自己的改进方法,如结合颜色和边缘检测来提高lp定位的成功率,以及交替使用连通分量分析和垂直投影法来提高分割的精度和效率。在字符识别方面,我们采用了改进的k近邻算法,并引入了一些新的特征向量来提高识别的准确性。实验结果表明,优化后的系统具有较高的LP识别率,准确率达到96.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimized license plate recognition system for complex situations
This paper optimizes traditional license plate recognition system (LPRS) and for each original part with deficiencies, we give our own novel methods to refine them, such as integrating color and edge detection to increase the success rate of locating LPs as well as employing connected component analysis and vertical projection method alternatively to make segmentation more precise and efficient. For character recognition, we apply improved K-Nearest Neighbors algorithm and introduce some novel feature vectors to improve the accuracy of recognition. Our experimental results indicate that the optimized system has a high LP recognition rate with the accuracy of 96.75%.
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