Online recognition by deviation-expansion model and A∗ algorithm-based matching

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This paper presents an online recognition system for large-alphabet handprinted Chinese characters using a model-based recognition approach with stroke-based features. A deviation-expansion (D-E) model representing the reference pattern is constructed. The model contains hypothetical knowledge of handwriting variations, including stroke-order deviations and strokenumber deviations. For pattern matching a matching tree is constructed by combining the knowledge of the reference pattern and the unknown pattern together. With the tree a similarity measure function is defined to indicate the degree of similarity. Evaluation of the function is obtained using A∗ algorithm-based matching. Experimental results are based upon testing a set of 54010 handprinted sample characters written in the square style by ten people. The cumulative classification rate of choosing the ten most similar characters is 98%. The results suggest that the hypothetical model is both feasible and reasonable.

论文关键词:online recognition,deviation-expansion model,A∗ algorithm-based matching

论文评审过程:Received 6 January 1992, Revised 11 September 1992, Available online 14 August 2003.

论文官网地址:https://doi.org/10.1016/0262-8856(93)90003-Y