Abstract

A novel post-processing system for a handwritten Chinese character recognition system based on a neural network classifier is presented. The recognition results for input character images, namely candidate characters and their confidence scores, as the observed features of the recognizer are classified into the most probable characters. The confusing character set is established by analyzing large-scale recognition experimental results, and the statistical characteristics for a recognizer are expressed as confusing character sets. 3755 character categories in the GB2312-80 character-set are clustered into several hundreds of groups through searching the transitive closure of the similarity matrix associated with the confusing characters of each character category. A group of neural networks for these category groups is established and trained to be a classifier in the post-processing to recover the unrecognized characters and adjust confidence scores of the candidate characters when a candidate sequence for each individual character image is given. The experimental results show that an average accuracy rate improvement of 5.6% and 3.8% for an online and an offline handwritten Chinese character recognition system are achieved respectively.

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