Combining Multiple and Classifiers for Increasing Accuracy for
نویسنده
چکیده
In this paper we combining statistical, structural Global transformation and moments features to form hybrid feature vector .We are combining Classifiers for achieving high accuracy for Devanagari Script. To abolish the hitch of misclassification and increase the classifier accurac combining SVM and KNN together. The dataset used for experiment are created by us.
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