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Hierarchical random graph representation of handwritten characters and its application to Hangul recognition

机译:手写字符的层次随机图表示及其在韩文识别中的应用

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摘要

A hierarchical random graph (HRG) representation for handwritten character modeling is presented. Based on the HRG, a Hangul, Korean scripts, recognition system also has been developed. In the HRG, the bottom layer is constructed with extended random graphs to describe various strokes, while the next upper layers are constructed with random graphs (Wong and Ghahraman, IEEE Trans. Pattern Anal. Mach. Intell. 2(4) (1980) 341) to model spatial and structural relationships between strokes and between sub-characters. As the proposed HRG is a stochastic model, the recognition is formulated into the problem that chooses a model producing maximum probability given an input data. In this context, a matching score is acquired not by any heuristic similarity function, but by a probabilistic measure. The recognition process starts from converting an input character image into an attributed graph through the preprocessing and the graph representation. Matching between an attributed graph and the hierarchical graph model is performed bottom-up. Since the hierarchical structure in an attributed graph is decided after the recognition ends depending on the best interpretation of the graph matching, we can avoid incorrect sub-character segmentation. Model parameters of the hierarchical graph have been estimated automatically from the training data by EM algorithm (Dempster et al., J. Roy. Stat. Soc. 39 (1977) 1) and embedded training. The recognition experiments conducted with unconstrained handwritten Hangul characters show the usefulness and the effectiveness of the proposed HRG. (C) 2000 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 13]
机译:提出了用于手写字符建模的分层随机图(HRG)表示。基于HRG,还开发了韩文韩文文字识别系统。在HRG中,底层由扩展的随机图构成以描述各种笔画,而下一层由随机图构成(Wong和Ghahraman,IEEE Trans。Pattern Anal。Mach。Intell。2(4)(1980) 341)对笔划之间以及子字符之间的空间和结构关系进行建模。由于拟议的HRG是随机模型,因此将识别公式化为问题,该问题选择在给定输入数据的情况下产生最大概率的模型。在这种情况下,匹配分数不是通过任何启发式相似性函数获取的,而是通过概率度量获取的。识别过程开始于通过预处理和图形表示将输入字符图像转换为属性图形。自底向上执行属性图和层次图模型之间的匹配。由于属性图的层次结构是在识别结束后根据图匹配的最佳解释确定的,因此可以避免错误的子字符分割。层次图的模型参数已通过EM算法(Dempster等,J。Roy。Stat。Soc。39(1977)1)和嵌入式训练从训练数据中自动估算出来。使用不受约束的手写韩文字符进行的识别实验表明了所提出的HRG的有用性和有效性。 (C)2000模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:13]

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