Eggplant leaf disease detection and segmentation using adaptively regularized multi Kernel-Based FuzzyC-Means and Optimal PNN classifier

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Abstract

Leaf diseases affect both the quantity and quality of crops in agricultural production. Early detection is preventing the plant from diseases. Therefore, in this paper, optimal probabilistic neural network (OPNN) based plant disease classification is proposed. At first, RGB transformation is performed to extract the green band of the eggplant leaf. Then, for the extracted green band; pre-processing is carried using median filter. After pre-processing, the features such as shape, color and vein are extracted. Then the extracted features are fed to the PNN classifier to classify an image as normal or abnormal. To enhance the PNN classifier, the weight values are optimally selected using Binary Crow Search Algorithm (BCSA). Finally, the affected portions are segmented using Adaptively Regularized multi Kernel-Based FuzzyC-Means (ARMKFCM). This research work is compared with other existing techniques through several performance metrics to show the superiority of our proposed methodology. © 2022, Engg Journals Publications. All rights reserved.

Year of Publication
2022
Journal
Indian Journal of Computer Science and Engineering
Volume
13
Issue
5
Number of Pages
1542-1558,
Type of Article
Article
ISBN Number
09765166 (ISSN)
DOI
10.21817/indjcse/2022/v13i5/221305073
Publisher
Engg Journals Publications
Journal Article
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