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Efficient Detection and Classification of Orange Diseases using Hybrid CNN-SVM Model

Nishant Garg, Radhika Gupta, Maninder Kaur, Suhaib Ahmed, Hari Shankar

202316 citationsDOI

Abstract

Orange is an important citrus fruit grown globally, and its consumption is encouraged by health-conscious individuals due to its nutritional value. Classifying oranges is important for quality control, sorting, and grading in the food industry. For the production of high-quality oranges, farm-based disease prediction is not utilizing technology to its full potential. A hybrid version is proposed in this research paper for the categorization of six common disorders of oranges, namely Penicillium, Scab, Anthracnose, Melanose, Phytophthora, and Citrus Canker, using a blend of the classifier - Support Vector Machine and ANN prototype - Convolutional Neural Network. With CNN being accustomed for feature derivation and SVM being utilized for classification, the suggested model leverages the best aspects of both algorithms. Using a dataset of 4,864 orange photos, the suggested hybrid model’s performance is assessed, and as a result, an accuracy of 88.13734% is achieved. Our sensitivity analysis indicates that the form, size, and texture of the lesions were the most crucial characteristics for categorizing orange-colored illnesses, followed by their texture and color. The effectiveness of utilizing a hybrid model for illness diagnosis in citrus fruits is shown by the postulated hybrid model’s superior performance over existing classification models like SVM, Random Forest, and K-Nearest Neighbor (KNN). The impeccable competence of the proposed hybrid model makes it suitable to be employed in automated disease detection systems to make prompt and well-informed decisions about disease management and prevention, thereby enhancing citrus crop productivity and quality.

Topics & Concepts

Support vector machineOrange (colour)Computer scienceArtificial intelligencePattern recognition (psychology)Convolutional neural networkClassifier (UML)Random forestMachine learningBiologyHorticultureSmart Agriculture and AISpectroscopy and Chemometric AnalysesDate Palm Research Studies
Efficient Detection and Classification of Orange Diseases using Hybrid CNN-SVM Model | Litcius