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Offline Handwritten Numeral Recognition Using Multiple Features and SVM classifieropen accessOffline Handwritten Numeral Recognition Using Multiple Features and SVM classifier

Other Titles
Offline Handwritten Numeral Recognition Using Multiple Features and SVM classifier
Authors
김갑순박중조
Issue Date
2015
Publisher
한국전기전자학회
Keywords
Numeral recognition; Directional stroke feature; Gradient feature; Concavity feature; SVM
Citation
전기전자학회논문지, v.19, no.4, pp 526 - 534
Pages
9
Indexed
KCI
Journal Title
전기전자학회논문지
Volume
19
Number
4
Start Page
526
End Page
534
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/17798
DOI
10.7471/ikeee.2015.19.4.526
ISSN
1226-7244
2288-243X
Abstract
In this paper, we studied the use of the foreground and background features and SVM classifier to improve the accuracy of offline handwritten numeral recognition. The foreground features are two directional features: directional gradient feature by Kirsch operators and directional stroke feature by local shrinking and expanding operations, and the background feature is concavity feature which is extracted from the convex hull of the numeral, where the concavity feature functions as complement to the directional features. During classification of the numeral, these three features are combined to obtain good discrimination power. The efficiency of our scheme is tested by recognition experiments on the handwritten numeral database CENPARMI, where SVM classifier with RBF kernel is used. The experimental results show the usefulness of our scheme and recognition rate of 99.10% is achieved.
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공과대학 > 제어계측공학과 > Journal Articles

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