A hierarchical deformation model for on-line cursive script recognition
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摘要
For the character recognition problem, it is known that the prior knowledge about the structure of patterns can be utilized as a guidance to obtain an accurate match efficiently. Naturally, the strokes, which are the primitive components of Chinese characters, play an important role to guide the correct recognition. Based on this high-level structural information, a hierarchical deformation model is proposed to describe the deformation of on-line cursive Chinese characters. The new approach consists of two levels of match processes. First, the attributed string editing algorithm matches two sequences of turn points extracted from the input and the reference characters to determine the stroke matches. Next, the constrained parabola transformation is used to reduce the difference between the matched strokes appropriately. Experimental results show that the hierarchical deformation model is a quite accurate approximation to the deformation of cursive Chinese characters with much lower computational cost. Furthermore, the distance measure between deformable characters derived in this paper is robust enough to greatly improve the performance of practical recognition systems.
论文关键词:On-line character recognition,Deformation model,Elastic matching,Dynamic programming,Least square estimation,Discrimination ability
论文评审过程:Received 14 August 1992, Revised 14 May 1993, Accepted 5 October 1993, Available online 19 May 2003.
论文官网地址:https://doi.org/10.1016/0031-3203(94)90054-X