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Disease Detection in Apple Leaves Using Image Processing Techniques

S. Alqethami, B. Almtanni, W. Alzhrani, M. Alghamdi

2022Engineering Technology & Applied Science Research67 citationsDOIOpen Access PDF

Abstract

The agricultural sector in Saudi Arabia constitutes an essential pillar of the national economy and food security. Crop diseases are a major problem of the agricultural sector and greatly affect the development of the economies in various countries around the world. This study employed three prediction models, namely CNN, SVM, and KNN, with different image processing methods to detect and classify apple plant leaves as healthy or diseased. These models were evaluated using the Kaggle New Plant Diseases database. This study aims to help farmers detect and prevent diseases from spreading. The proposed method provides recommendations for the appropriate solutions for each type of recognized plant disease based on the classification results.

Topics & Concepts

PillarAgricultureFood securitySupport vector machinePlant diseaseImage processingComputer scienceDiseaseArtificial intelligenceAgricultural engineeringMachine learningImage (mathematics)BiotechnologyGeographyEngineeringBiologyMedicineArchaeologyStructural engineeringPathologySmart Agriculture and AISpectroscopy and Chemometric AnalysesDate Palm Research Studies
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