Development of an Improved Capsule-Yolo Network for Automatic Tomato Plant Disease Early Detection and Diagnosis
Idris Ochijenu, Monday Abutu Idakwo, Sani Felix

TL;DR
This paper introduces an improved Capsule-YOLO network for early detection of tomato plant diseases, achieving high accuracy and providing a user-friendly interface to aid farmers in disease diagnosis and treatment, thereby enhancing crop yields.
Contribution
The study develops an enhanced Capsule-YOLO architecture capable of accurately segmenting and identifying tomato diseases in complex images, with a practical interface for real-world agricultural use.
Findings
Achieved 99.31% accuracy in disease detection
Improved performance metrics over existing methods
Developed a user-friendly disease diagnosis system
Abstract
Like many countries, Nigeria is naturally endowed with fertile agricultural soil that supports large-scale tomato production. However, the prevalence of disease causing pathogens poses a significant threat to tomato health, often leading to reduced yields and, in severe cases, the extinction of certain species. These diseases jeopardise both the quality and quantity of tomato harvests, contributing to food insecurity. Fortunately, tomato diseases can often be visually identified through distinct forms, appearances, or textures, typically first visible on leaves and fruits. This study presents an enhanced Capsule-YOLO network architecture designed to automatically segment overlapping and occluded tomato leaf images from complex backgrounds using the YOLO framework. It identifies disease symptoms with impressive performance metrics: 99.31% accuracy, 98.78% recall, and 99.09% precision,…
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