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Comparison of SVM and Fuzzy Classifier for an Indian Script


Affiliations
1 Department of Computer Science and Engineering, Shri Neminath Jain Brahmacharyashram’s Late Sau. Kantabai Bhavarlalji Jain College of Engineering, Maharashtra, India
2 Department of Computer Science and Information Technology, Dr. Babasaheb Ambedkar Marathwada University, Maharashtra, India
     

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With the advent of technological era, conversion of scanned document (handwritten or printed) into machine editable format has attracted many researchers. This paper deals with the problem of recognition of Gujarati handwritten numerals. Gujarati numeral recognition requires performing some specific steps as a part of preprocessing. For preprocessing digitization, segmentation, normalization and thinning are done with considering that the image have almost no noise. Further affine invariant moments based model is used for feature extraction and finally Support Vector Machine (SVM) and Fuzzy classifiers are used for numeral classification. . The comparison of SVM and Fuzzy classifier is made and it can be seen that SVM procured better results as compared to Fuzzy Classifier.

Keywords

Support Vector Machine, Fuzzy Classifier, Gujarati Handwritten Numerals.
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  • Comparison of SVM and Fuzzy Classifier for an Indian Script

Abstract Views: 168  |  PDF Views: 0

Authors

M. J. Baheti
Department of Computer Science and Engineering, Shri Neminath Jain Brahmacharyashram’s Late Sau. Kantabai Bhavarlalji Jain College of Engineering, Maharashtra, India
K. V. Kale
Department of Computer Science and Information Technology, Dr. Babasaheb Ambedkar Marathwada University, Maharashtra, India

Abstract


With the advent of technological era, conversion of scanned document (handwritten or printed) into machine editable format has attracted many researchers. This paper deals with the problem of recognition of Gujarati handwritten numerals. Gujarati numeral recognition requires performing some specific steps as a part of preprocessing. For preprocessing digitization, segmentation, normalization and thinning are done with considering that the image have almost no noise. Further affine invariant moments based model is used for feature extraction and finally Support Vector Machine (SVM) and Fuzzy classifiers are used for numeral classification. . The comparison of SVM and Fuzzy classifier is made and it can be seen that SVM procured better results as compared to Fuzzy Classifier.

Keywords


Support Vector Machine, Fuzzy Classifier, Gujarati Handwritten Numerals.