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Effective Handwritten Hangul Recognition Method Based on the Hierarchical Stroke Model Matching

机译:基于分层笔划模型匹配的有效手写体韩文识别方法

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摘要

This study defines three models based on the stroke for handwritten Hangul recognition. Those are trainable and not sensitive to variation which is frequently founded in handwritten Hangul. The first is stroke model which consists of 32 stroke models. It is a stochastic model of stroke which is fundamental of character. The second is grapheme model that is a stochastic model using composition of stroke models and the last is character model that is a stochastic model using relative locations between the grapheme models. This study also suggests a new stroke extraction method from a grapheme. This method does not need to define location of stroke, but it is effective in terms of numbers and kinds of stroke models extracted from graphemes of similar shape. The suggested models can be adapted to hierarchical bottom-up matching, that is the matching from stroke model to character model. As a result of experiment, we obtain 88.7% recognition rate of accuracy that is better than those of existing studies.
机译:这项研究基于笔划定义了三种用于手写韩文识别的模型。这些是可训练的,并且对手写韩文中经常出现的变化不敏感。第一个是笔划模型,由32个笔划模型组成。它是笔画的随机模型,是字符的基础。第二个是字素模型,它是使用笔划模型的组成的随机模型,最后一个是字符模型,它是使用字素模型之间的相对位置的随机模型。这项研究还提出了一种从字素中提取笔划的新方法。该方法不需要定义笔划的位置,但是在从相似形状的字素中提取的笔划模型的数量和种类方面有效。建议的模型可以适应自下而上的分层匹配,即从笔画模型到字符模型的匹配。通过实验,我们获得了88.7%的准确率识别率,优于现有研究。

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