License Plate Character Segmentation Using Key Character Location and Projection Analysis

Bingshu Wang, C. L. P. Chen
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引用次数: 3

Abstract

Character segmentation forms a link between license plate detection and character recognition. This paper presents a two-stage character segmentation framework. Firstly, a cascade classifier is trained by AdaBoost algorithm to locate key character which represents an administrative area. Then, based on key character location information, the rest of characters can be predicted or estimated. For the neighbor character of key character, it can be predicted by connected components analysis. For other characters that are far from the key character, a vertical projection strategy without hyphens is proposed to segment them. This strategy is promising to address the issue of touching characters. To illustrate the effectiveness of character segmentation, broad learning system is adopted to classify segmented characters. Experimental results performed on Macau license plates demonstrate the proposed method’s effectiveness in comparison with some state-of-the-art approaches. It is expected to apply the designed techniques to license plate character segmentation of other regions or countries that have similar situations with Macau’s.
基于关键字符定位和投影分析的车牌字符分割
字符分割是车牌检测和字符识别之间的一个环节。提出了一种两阶段字符分割框架。首先,利用AdaBoost算法训练级联分类器,定位代表行政区域的关键字符;然后,根据关键字符的位置信息,可以预测或估计其余字符。对于关键字符的相邻字符,可以通过连通分量分析进行预测。对于距离关键字较远的其他字符,提出了一种不带连字符的垂直投影策略对其进行分割。这一策略有望解决感人角色的问题。为了说明字符切分的有效性,采用广义学习系统对切分字符进行分类。在澳门车牌上进行的实验结果表明,与一些最先进的方法相比,所提出的方法是有效的。期望将所设计的技术应用于与澳门情况相似的其他地区或国家的车牌字符分割。
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