Online Handwritten Kanji Recognition Based on Inter-stroke Grammar

Ikumi Ota, Ryo Yamamoto, Shinji Sako, S. Sagayama
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引用次数: 15

Abstract

This paper presents a new approach to online recognition of handwritten Kanji characters focusing on their hierarchical structure. Stochastic context-free grammar (SCFG) is introduced to represent the Kanji character generating process in combination with Hidden Markov Models (HMM) representing Kanji substrokes and to improve the recognition accuracy of important and frequently used Kanji characters in which inter-stroke relative positions play important roles. Combining the stroke likelihood and the relative-position likelihood between character-parts in the parsing process is expected to compensate their ambiguities. By modeling relative positions and share the models across distinct Kanji categories, a small training data can yield effective results and enables us to recognize Kanji simply by defining the SCFG rules to represent their structures without training data. Experimental results on an online handwritten Kanji database from JAIST (Japan Advanced Institute of Science and Technology) showed significant improvements in the recognition rates of some important Kanji with relatively fewer strokes and also showed little difference between the trained- and the non-trained Kanji in recognition rates.
基于笔画间语法的在线手写汉字识别
本文提出了一种基于层次结构的手写体汉字在线识别方法。将随机上下文无关语法(SCFG)与表示汉字笔画的隐马尔可夫模型(HMM)相结合,用于表示汉字字符的生成过程,以提高对笔画间相对位置起重要作用的重要和常用汉字的识别精度。在分析过程中,结合笔画似然和字符部分之间的相对位置似然来补偿它们的歧义。通过对不同汉字类别的相对位置建模并共享模型,一个小的训练数据可以产生有效的结果,使我们能够在没有训练数据的情况下,通过定义SCFG规则来表示它们的结构来识别汉字。在日本高等科学技术研究所(JAIST)的在线手写汉字数据库上进行的实验结果表明,使用相对较少笔画的重要汉字的识别率有显著提高,并且训练过的汉字与未训练过的汉字的识别率差异不大。
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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