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A self-organizing hierarchical classifier for multi-lingual large-set oriental character recognition

机译:用于多语言大型东方角色识别的自组织分级分类器

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In this paper, we propose a practical scheme for multi-lingual, multi-font and multisize large-set Oriental character recognition using a self-organizing hierarchical neural network classifier. In order to absorb the variation of the charactershapes in multi-font and multi-size characters, a modified nonlinear shape normalization method based on dot density was introduced, and also to represent the different topological structures of multilingual characters effectively, a hierarchical featureextraction method was adopted. For coarse classification, a tree classifier and SOFM/LVQ based classifier which is composed of an adaptive SOFM coarse-classifier and an LVQ4 language-classifier were considered. For fine classification, a classifier basedon LVQ4 learning algorithm has been developed. The experimental results revealed that the proposed scheme has the highest recognition rate of 98.27% for testing data with 7,320 kinds of multi-lingual classes and the time performance of more than 40 characters per second on 486DX-2 66MHz PC.
机译:在本文中,我们提出了一种使用自组织分层神经网络分类器的多语言,多字体和多种大学大型东方角色识别的实用方案。为了吸收多字体和多尺寸字符中的特征接收的变化,引入了基于点密度的改进的非线性形状标准化方法,并且还有效地表示多语种特征的不同拓扑结构,其分层展示方法是采纳。对于粗分类,考虑了由Adaptive Sofm粗分类和LVQ4语言分类器组成的树分类器和基于SOFM / LVQ的分类器。为了精细分类,已经开发了一种分类器的LVQ4学习算法。实验结果表明,该方案的识别率最高为98.27%,用于测试7,320种多语言类别的数据以及486dx-2 66MHz PC每秒超过40个字符的时间性能。

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