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Optimal design of reference models using simulated annealing combined with an improved LVQ3

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2 Author(s)
Seong-Whan Lee ; Dept. of Comput. Sci., Chungbuk Nat. Univ., South Korea ; Song, H.-H.

For the recognition of large-set handwritten characters, classification methods based on pattern matching have been commonly used, and good reference models play a very important role in achieving high performance in these methods. Learning vector quantization (LVQ) has been studied intensively to generate good reference models in speech recognition since 1986. However, the design of reference models based on LVQ has several drawbacks for the recognition of large-set handwritten characters. To cope with these, the authors propose a method for the optimal design of reference models using simulated annealing combined with an improved LVQ3 for the recognition of large-set handwritten characters. Experimental results reveal that the proposed method is superior to the conventional method based on averaging and other LVQ-based methods

Published in:

Document Analysis and Recognition, 1993., Proceedings of the Second International Conference on

Date of Conference:

20-22 Oct 1993