一种用于无监督字符分类的模糊模型

Shy-Shyan Chen, Frank Y. Shih, Peter A. Ng
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引用次数: 5

摘要

为了提高字符识别系统的鲁棒性、正确性和速度,提出了一种基于模糊逻辑的无监督字符分类方法。这些字符首先被分成七个排版类别。该分类方案采用模式匹配的方法,基于非线性加权相似度函数,将每一类中的字符划分为一组模糊原型。提出了模糊无监督字符分类方法,并探索了加权模糊相似度度量方法。讨论了模糊模型的特点,并将其用于加速分类过程。分类后的字符识别,只需在较小的模糊原型集合上进行识别,就可以大大简化识别过程,节省识别时间。
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A fuzzy model for unsupervised character classification

This paper presents a fuzzy logic approach to efficiently perform unsupervised character classification for improvement in robustness, correctness, and speed of a character recognition system. The characters are first split into seven typographical categories. The classification scheme uses pattern matching to classify the characters in each category into a set of fuzzy prototypes based on a nonlinear weighted similarity function. The fuzzy unsupervised character classification, which is natural in the representation of prototypes for character matching, is developed and a weighted fuzzy similarity measure is explored. The characteristics of the fuzzy model are discussed and used in speeding up the classification process. After classification, the character recognition which is simply applied on a smaller set of the fuzzy prototypes, becomes much easier and less time-consuming.

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An application of fuzzy logic control to a gimballed payload on a space platform Logic programming and the execution model of Prolog Author index to volumes 3–4 Volume contents for 1995 Title index for volume 3–4
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