Feature Extraction for handwritten Chinese character recognition using X-Y graphs decomposition and Haar wavelet

J.C. Lee, T. J. Fong, Y. Chang
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引用次数: 10

Abstract

In this paper, a new approach of feature extraction method for handwritten Chinese character recognition called X-Y graphs decomposition is presented. Central to the proposed method is the idea of capturing the geometrical and topological information from the trajectory of the handwritten character using two unique decomposed graphs: X-graph and Y-graph. For feature size reduction, Haar wavelet is applied on the graphs, in which this is a new attempt of wavelet transform. Features extracted using X-Y graphs decomposition with Haar wavelet not only cover both the global and local features of the characters, but also are invariant of different writing styles. As a result, the discrimination power of the recognition system can be strengthened, especially for recognizing similar characters, deformed characters and characters with connected strokes. Experimental results have proved the efficiency of our proposed method and it is superior to other representative traditional feature extraction schemes with high recognition rate of 95.5%, despite of small dimensionality between 64 (inclusive) and 128 (exclusive) and less processing time.
基于X-Y图分解和Haar小波的手写汉字特征提取
本文提出了一种新的手写体汉字特征提取方法——X-Y图分解。该方法的核心思想是使用两个独特的分解图:x图和y图,从手写字符的轨迹中捕获几何和拓扑信息。在特征尺寸缩减方面,采用Haar小波对图进行处理,这是小波变换的一种新尝试。利用Haar小波分解X-Y图提取的特征不仅涵盖了字符的全局和局部特征,而且对不同的书写风格具有不变性。这样可以增强识别系统的识别能力,特别是对相似字、变形字和连笔字的识别能力。实验结果证明了该方法的有效性,优于其他具有代表性的传统特征提取方案,尽管该方法的维数较小,仅在64(含)和128(不含)之间,而且处理时间更短,识别率高达95.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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