Towards Automated Detection of Tomato Leaf Diseases
Md. Redwan Ahmed, Rezaul Haque, Soaibur Rahman, Sheikh Shemanto Afridi, Md Fahim Faez Abir, Md. Forhad Hossain, Musharrat Khan, Md. Mohsin Uddin
Abstract
Prompt detection of plant diseases is crucial due to their detrimental impact on society, ecology, and economy. Accurate categorization of tomato leaf diseases is essential for sustaining agricultural productivity and guaranteeing food security. Consequently, it is exceedingly intricate and leads to an overwhelming amount of labor and waste of time. This paper utilized deep learning with novel ensemble architectures to categorize nine diseases affecting tomato plant leaves, as well as healthy leaves. This method utilized a grand total of 60,000 photos. The paper introduces a new method for classifying tomato leaf diseases by utilizing a hybrid transfer learning model. The approach we employ combines the advantages of transfer learning with conventional machine learning methods to enhance the accuracy and efficiency of classification. We assess our methodology by utilizing a dataset consisting of 60,000 photos of tomato leaves afflicted with ten distinct illnesses. The experimental findings show that our XSVC model achieves a remarkable accuracy of 99.51%, surpassing the performance of the most advanced approaches available. In addition, we provide an Android application that enables users to upload photos of tomato leaves for disease prediction utilizing the XSVC model. Our research enhances the field of plant disease diagnosis by providing precise and effective solutions for promptly detecting and categorizing diseases in agricultural environments.