Deep Learning Based Tomato Leaf Disease Detection for Smart Farming

  • Arshad . Students, Department of ECE, Vidyavardhaka College of Engineering, Mysuru, India
  • Kantharaja S K Students, Department of ECE, Vidyavardhaka College of Engineering, Mysuru, India
  • Karthik M Students, Department of ECE, Vidyavardhaka College of Engineering, Mysuru, India
  • Subhash . Students, Department of ECE, Vidyavardhaka College of Engineering, Mysuru, India
  • Kiran . Students, Department of ECE, Vidyavardhaka College of Engineering, Mysuru, India
Keywords: Deep Learning, Neural Network, Farming, Leaf disease detection, Image recognition.

Abstract

Tomato cultivation has a major role in global agriculture, contributing to both food security and economic stability. Still, tomato plants are susceptive to various diseases, which can specially reduce yield and quality. Plant disease early detection and treatment depend more and more on automatic disease identification and categorization technologies. In this paper, we present a Deep Learning based approach for tomato leaf diseases classification using VGG16 Convolutional Neural Network architecture. The VGG16 model is well-known for its superior picture categorization ability, A data set is used to train the VGG16 that includes healthy tomato leaves and leaves that are contaminated with common diseases like Early Blight, Late Blight, Leaf Mold, and Bacterial Spot. The dataset used in training and assessment comprises a varied assortment of high-resolution images acquired from various sources, guaranteeing the resilience and adaptability of the suggested model. Our utilization of data augmentation methods aims to improve the model's capacity to address variations in leaf characteristics, such as alterations in lighting, background complexity, and leaf positioning. Through experimental findings, we have validated the efficacy of our approach in precisely categorizing tomato leaf diseases with remarkable recall rates and precision. Comparative evaluations against leading techniques highlight the superior classification performance and computational efficiency of the VGG16-based model.
Published
2024-05-18