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A hierarchical license plate recognition system using supervised K-means and Support Vector Machine

机译:使用监督K-means和支持向量机的分层车牌识别系统

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摘要

In recent years, the use of license plate recognition technology in traffic monitor has attracted a lot of attention because it can be used in a smart city to do criminal investigation and traffic detection. License plate recognition technology has been widely used in parking lot management systems which has fixed shooting angle and lighting environments. The license plate recognition used in traffic monitor will encounter difficulties in character recognition due to factors such as shooting angle, vehicle speed and environment light and shadow. Aiming at the blurred and skewed character images caused by the above factors, this paper presents a hierarchical architecture combining supervised K-means and support vector machine. The supervised K-means is used to classify characters into subgroups. The characters of subgroups can be further classified by support vector machine. The advantage of the proposed approach is to reduce the classes of characters in each subgroup to further reduce the number of SVMs and their complexity, and thus improve the accuracy of character recognition. Experimental results show that our proposed hierarchical architecture achieves an accuracy of 98.89% in character recognition. Compared with the license plate recognition technology using SVM alone, we get a 3.6% improvement in recognition rate.
机译:近年来,在交通监控器中使用牌照识别技术引起了很多关注,因为它可以在智能城市进行刑事调查和交通检测。车牌识别技术已广泛应用于具有固定拍摄角度和照明环境的停车场管理系统。由于拍摄角度,车辆速度和环境光线和阴影等因素,交通监视器中使用的车牌识别将遇到字符识别的困难。旨在由上述因素引起的模糊和偏斜的字符图像,本文提出了一种分层架构,组合监督K-Means和支持向量机。监督的k均值用于将字符对分类为子组。子组的字符可以通过支持向量机进一步分类。所提出的方法的优点是减少每个子组中的字符类,以进一步减少SVM的数量及其复杂性,从而提高字符识别的准确性。实验结果表明,我们提出的等级架构在字符识别中实现了98.89 %的准确性。与单独使用SVM的牌照识别技术相比,我们在识别率上得到3.6 %。

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