Handwritten Chinese Character Recognition Based on Primitive and Fuzzy Features via the SEART Neural Net Model
作者:Hahn-Ming Lee, Chung-Chieh Sheu, Jyh-Ming Chen
摘要
A handwritten Chinese character recognition method based on primitive and compound fuzzy features using the SEART neural network model is proposed. The primitive features are extracted in local and global view. Since handwritten Chinese characters vary a great deal, the fuzzy concept is used to extract the compound features in structural view. We combine the two categories of features and use a fast classifier, called the Supervised Extended ART (SEART) neural network model, to recognize handwritten Chinese characters. The SEART classifier has excellent performance, is fast, and has good generalization and exception handling abilities in complex problems. Using the fuzzy set theory in feature extraction and the neural network model as a classifier is helpful for reducing distortions, noise and variations. In spite of the poor thinning, a 90.24% recognition rate on average for the 605 test character categories was obtained. The database used is CCL/HCCR3 (provided by CCL, ITRI, Taiwan). The experiment not only confirms the feasibility of the proposed system, but also suggests that applying the fuzzy set theory and neural networks to recognition of handwritten Chinese characters is an efficient and promising approach.
论文关键词:handwritten Chinese characters recognition, neural network model, fuzzy set theory, primitive features, fuzzy compound features
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论文官网地址:https://doi.org/10.1023/A:1008272518100