Two-stage segmentation of unconstrained handwritten Chinese characters

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摘要

Correct segmentation of handwritten Chinese characters is crucial to their successful recognition. However, due to many difficulties involved, little work has been reported in this area. In this paper, a two-stage approach is presented to segment unconstrained handwritten Chinese characters. A handwritten Chinese character string is first coarsely segmented according to the background skeleton and vertical projection after a proper image preprocessing. With several geometric features, all possible segmentation paths are evaluated by using the fuzzy decision rules learned from examples. As a result, unsuitable segmentation paths are discarded. In the fine segmentation stage that follows, the strokes that may contain segmentation points are first identified. The feature points are then extracted from candidate strokes and taken as segmentation point candidates through each of which a segmentation path may be formed. The geometric features similar to the coarse segmentation stage are used and corresponding fuzzy decision rules are generated to evaluate fine segmentation paths. Experimental results on 1000 Chinese character strings from postal mail show that our approach can achieve a reasonable good overall accuracy in segmenting unconstrained handwritten Chinese characters.

论文关键词:Character segmentation,Chinese character recognition,Unconstrained handwritten Chinese characters,Decision trees,Fuzzy decision rules,Image preprocessing

论文评审过程:Received 1 December 2000, Accepted 19 November 2001, Available online 17 February 2006.

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00041-9