International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
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Volume 89 - Issue 1 |
Published: March 2014 |
Authors: Pratibha Singh, Ajay Verma, Narendra S. Chaudhari |
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Pratibha Singh, Ajay Verma, Narendra S. Chaudhari . Handwritten Devnagari Digit Recognition using Fusion of Global and Local Features. International Journal of Computer Applications. 89, 1 (March 2014), 6-12. DOI=10.5120/15464-3628
@article{ 10.5120/15464-3628, author = { Pratibha Singh,Ajay Verma,Narendra S. Chaudhari }, title = { Handwritten Devnagari Digit Recognition using Fusion of Global and Local Features }, journal = { International Journal of Computer Applications }, year = { 2014 }, volume = { 89 }, number = { 1 }, pages = { 6-12 }, doi = { 10.5120/15464-3628 }, publisher = { Foundation of Computer Science (FCS), NY, USA } }
%0 Journal Article %D 2014 %A Pratibha Singh %A Ajay Verma %A Narendra S. Chaudhari %T Handwritten Devnagari Digit Recognition using Fusion of Global and Local Features%T %J International Journal of Computer Applications %V 89 %N 1 %P 6-12 %R 10.5120/15464-3628 %I Foundation of Computer Science (FCS), NY, USA
We give our formulation for a ten class classification of handwritten Hindi digit recognition. Automatic Recognition of Handwritten Devnagri Numerals is a difficult task, because of the variability in writing style; pen used for writing and the color of handwriting, unlikely the printed character. Furthermore, Hindi Digit can be drawn in different sizes. Therefore, a robust offline Hindi handwritten recognition system has to account for all of these factors. Hence we have chosen a combination of global and local features. The global features are the structural features like endpoint, crosspoint, centroid of the loop, u shaped structure, C shaped structure and inverted C shaped structure. The local set of features combine the distance of thinned image from geometric centroid calculated zone-wise and histogram based features calculated zone-wise. Variability in writing style is taken care by size normalization and normalization to constant thickness as preprocessing a step before feature extraction. We used an Artificial Neural Network as classifier for recognition. Our method results in average correct rate of 95% or better. The combination of local and global features results in reduced confusion value. .