Copyright © 2002 Pattern Recognition Society. Published by Elsevier Science B.V.
Unconstrained handwritten character recognition based on fuzzy logic
Received 3 August 2001;
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Abstract
This paper presents an innovative approach called box method for feature extraction for the recognition of handwritten characters. In this method, the binary image of the character is partitioned into a fixed number of subimages called boxes. The features consist of vector distance (γ) from each box to a fixed point. To find γ the vector distances of all the pixels, lying in a particular box, from the fixed point are calculated and added up and normalized by the number of pixels within that box. Here, both neural networks and fuzzy logic techniques are used for recognition and recognition rates are found to be around 97 percent using neural networks and 98 percent using fuzzy logic. The methods are independent of font, size and with minor changes in preprocessing, it can be adopted for any language.
Author Keywords: Box method; Handwritten characters; Neural networks and fuzzy logic
Article Outline
- 1. Introduction
- 2. Preprocessing
- 2.1. Slant correction
- 2.2. Normalization
- 2.3. Thinning and description of SPTA algorithm
- 2.4. Modified SPTA
- 3. The box approach
- 4. Recognition system
- 4.1. Database for training and testing
- 4.2. Recognition based on neural networks
- 4.3. Recognition based on fuzzy logic
- 5. Conclusions
- Summary
- Acknowledgements
- References
- Vitae






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