Optimized Custom CNN for Real-Time Tomato Leaf Disease Detection
Mangsura Kabir Oni, Tabia Tanzin Prama

TL;DR
This paper presents a custom CNN model that achieves high accuracy in real-time tomato leaf disease detection, outperforming other deep learning models and aiding early intervention for better crop management.
Contribution
The development of a specialized CNN model tailored for tomato leaf disease detection with superior accuracy compared to existing models.
Findings
Custom CNN achieved 95.2% accuracy
Outperformed YOLOv5, MobileNetV2, ResNet18 models
Demonstrated potential for early disease detection in agriculture
Abstract
In Bangladesh, tomatoes are a staple vegetable, prized for their versatility in various culinary applications. However, the cultivation of tomatoes is often hindered by a range of diseases that can significantly reduce crop yields and quality. Early detection of these diseases is crucial for implementing timely interventions and ensuring the sustainability of tomato production. Traditional manual inspection methods, while effective, are labor-intensive and prone to human error. To address these challenges, this research paper sought to develop an automated disease detection system using Convolutional Neural Networks (CNNs). A comprehensive dataset of tomato leaves was collected from the Brahmanbaria district, preprocessed to enhance image quality, and then applied to various deep learning models. Comparative performance analysis was conducted between YOLOv5, MobileNetV2, ResNet18, and…
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Taxonomy
TopicsSmart Agriculture and AI · Scientific and Engineering Research Topics · Advanced Data and IoT Technologies
