An advanced approach for fig leaf disease detection and classification: Leveraging image processing and enhanced support vector machine methodology

Author:

Alzoubi Sharaf1,Jawarneh Malik2,Bsoul Qusay3,Keshta Ismail4,Soni Mukesh5,Khan Muhammad Attique6

Affiliation:

1. Information Technology Department, Amman Arab University , Amman , Jordan

2. Department of Computer Science and MIS, Oman College of Management and Technology , Muscat , Oman

3. Faculty of Information Technology, Applied Science Private University , Amman , Jordan

4. Computer Science and Information Systems Department, College of Applied Sciences, AlMaarefa University , Riyadh , Saudi Arabia

5. Department of CSE, University Centre for Research & Development Chandigarh University , Mohali , Punjab, 140413 , India

6. Department of Computer Science, HITEC University , Taxila , Pakistan

Abstract

Abstract In the rapidly evolving landscape of agricultural technology, image processing has emerged as a powerful tool for addressing critical agricultural challenges, with a particular focus on the identification and management of crop diseases. This study is motivated by the imperative need to enhance agricultural sustainability and productivity through precise plant health monitoring. Our primary objective is to propose an innovative approach combining support vector machine (SVM) with advanced image processing techniques to achieve precise detection and classification of fig leaf diseases. Our methodology encompasses a step-by-step process, beginning with the acquisition of digital color images of diseased leaves, followed by denoising using the mean function and enhancement through Contrast-limited adaptive histogram equalization. The subsequent stages involve segmentation through the Fuzzy C Means algorithm, feature extraction via Principal Component Analysis, and disease classification, employing Particle Swarm Optimization (PSO) in conjunction with SVM, Backpropagation Neural Network, and Random Forest algorithms. The results of our study showcase the exceptional performance of the PSO SVM algorithm in accurately classifying and detecting fig leaf disease, demonstrating its potential for practical implementation in agriculture. This innovative approach not only underscores the significance of advanced image processing techniques but also highlights their substantial contributions to sustainable agriculture and plant disease mitigation. In conclusion, the integration of image processing and SVM-based classification offers a promising avenue for advancing crop disease management, ultimately bolstering agricultural productivity and global food security.

Publisher

Walter de Gruyter GmbH

Subject

General Agricultural and Biological Sciences,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Neuroscience

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