草书字符识别系统

Karina Toscano, Gabriel Sánchez, M. Nakano, Hector Perez, Makoto Yasuhara
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引用次数: 3

摘要

在过去的二十年中,已经提出了许多手写字符识别系统。这些方法在手写体为草书字体且有一定变形的情况下,存在一定的局限性。然而,这种类型的草书很容易被人类识别。本文研究了它的人性化,并将其应用于动态手写字符识别中。该系统采用自然样条函数SLALOM提取每个特征的重要结点,并采用最陡下降法对其位置进行优化。使用由最优结点序列组成的训练集,构建每个特征模型。最后将未知输入字符与所有字符的每个模型进行比较,得到相似度得分。将相似度得分较高的字符模型作为输入数据的识别字符。识别阶段分为两个步骤:利用全局特征进行分类和利用局部特征进行分类
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Cursive Character Recognition System
During the last two decade, numerous handwriting character recognition systems have been proposed. Many of them presented their limitation when the handwriting character is cursive type and it has some deformation. However this type of cursive character is easily recognized by the human being. In this paper we research its human ability and apply it to the dynamic handwriting character recognition. In the proposed system, significant knots of each character are extracted using natural spline function named SLALOM and their position is optimized steepest descent method. Using a training set consisting of the sequence of optimal knots, each character model is constructed. Finally the unknown input character is compared with each model of all characters to get the similarity scores. The character model with higher similarity score is considered as the recognized character of the input data. The recognition stage consists in two-steps: classification using global feature and classification using local feature
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