Fuzzy approach to solve the recognition problem of handwritten chinese characters

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摘要

A method based on the concept of fuzzy set for handwritten Chinese character (HCC) recognition is proposed in this paper. Chinese characters can be viewed as a collection of line segments, called strokes. Since the strokes under consideration here are fuzzy in nature, the concept of fuzzy set is utilized in the similarity measure. Two membership functions are defined for the location measure and type measure between two strokes, and a function of fuzzy entropy is used in information measure. Although the recognition problem can be reduced to the assignment problem, some modifications are still necessary. All the similarities between the corresponding strokes can be chosen by solving the assignment problem using the cost function of fuzzy entropy, and then are averaged to derive the score of similarity between two Chinese characters. 881 classes of Chinese characters in ETL-8 (160 variations/class) are used as the test patterns, and the recognition rate is about 96%.In addition, experiments about the effects of the membership function based on the class separability are also discussed in this paper.

论文关键词:Similarity measure,Membership function,Assignment problem,Fuzzy entropy,Probabilistic metric space,Class separability

论文评审过程:Received 11 December 1987, Revised 20 May 1988, Accepted 7 June 1988, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(89)90060-5