This paper presents the identification and classification of Indian agricultural crop species using a novel combined localbinaryhistogrampattern of gradient (lbhpg) image feature extraction technique. Initially, a ...
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This paper presents the identification and classification of Indian agricultural crop species using a novel combined localbinaryhistogrampattern of gradient (lbhpg) image feature extraction technique. Initially, a partition of the leaf image background is done through the newly developed fast adaptive fuzzy C-mean clustering (FAFCM) technique. After that, leaf objects within the image are identified using the lbhpg method. For the classification, KNN, PNN, and SVM shallow machine learning classifiers are used for crop species identification. The performance evaluation is done using LBP and HOG individually along with the new proposed lbhpg technique for classification using KNN, PNN, and SVM Classifiers. The performance evaluation is based on six metrics parameters of the confusion matrix, viz., accuracy, sensitivity, specificity, precision, recall, and F-measure. The experimental results show that the proposed novel LBHP feature extraction technique with PNN Classifier gives the highest accuracy of 94.58%.
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