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On-Line Handwritten Cursive Character Recognition System

机译:在线手写草书字符识别系统

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摘要

During the last two decades have been proposed many handwritten character recognition systems, however until now there are still many limitations, especially for the cursive handwritten characters. In this paper a new algorithm for cursive handwritten characters recognition based on the Spline functions is proposed, in which the inverse process of the handwritten character construction task will be used to recognize the character. From the samples got by using a digitizer board, the sequence of the most significant points (optimal knots) of the handwriting character will be obtained, and then the natural Spline function (Slalom method) and the steepest descent method will be used to interpolate and approximate the character shape. Using a training set consisting of the sequence of optimal knots, each rncharacter model will be constructed. Finally the unknown input character will be, compared with each model of all characters to get the similarity scores. The character model with higher similarity score will be considered as the recognized character of the input data. In the recognition stage, two-steps classification is realized detail analysis for some groups of similar characters. The global recognition rate of the proposed system is 94.5% .
机译:在过去的二十年中,已经提出了许多手写字符识别系统,但是直到现在仍然存在许多局限性,特别是对于草书手写字符。提出了一种新的基于样条函数的草书手写字符识别算法,该算法将利用手写字符构造任务的逆过程来识别字符。从使用数字化板获得的样本中,将获得手写字符的最高有效点(最佳结)的顺序,然后使用自然样条函数(Slalom方法)和最速下降方法进行插值和近似字符形状。使用由最佳结序列组成的训练集,将构建每个字符模型。最终,将未知输入字符与所有字符的每个模型进行比较,以获得相似度得分。具有较高相似度得分的字符模型将被视为输入数据的识别字符。在识别阶段,对相似字符的某些组进行两步分类的详细分析。该系统的全球识别率为94.5%。

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