Affiliation:
1. GGSIP University, India
2. VIT University, India
Abstract
With the increasing computational power, areas such as machine learning, image processing, deep learning, etc. have been extensively applied in agriculture. This chapter investigates the applications of the said areas and various prediction models in plant pathology for accurate classification, identification, and quantification of plant diseases. The authors aim to automate the plant disease identification process. To accomplish this objective, CNN has been utilized for image classification. Research shows that deep learning architectures outperform other machine learning tools significantly. To this effect, the authors have implemented and trained five CNN models, namely Inception ResNet v2, VGG16, VGG19, ResNet50, and Xception, on PlantVillage dataset for tomato leaf images. The authors analyzed 18,160 tomato leaf images spread across 10 class labels. After comparing their performance measures, ResNet50 proved to be the most accurate prediction tool. It was employed to create a mobile application to classify and identify tomato plant diseases successfully.
Cited by
21 articles.
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1. ResNet vs Inception-v3 vs SVM: A Comparative Study of Deep Learning Models for Image Classification of Plant Disease Detection;2024 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation (IATMSI);2024-03-14
2. Tomato Plant Disease Detection Using Image Processing for Agriculture Application;2024 IEEE International Conference on Big Data & Machine Learning (ICBDML);2024-02-24
3. Revolutionizing Precision Agriculture Using Artificial Intelligence and Machine Learning;Data Science for Agricultural Innovation and Productivity;2024-02-08
4. Deep Learning for Real-Time Leaf Disease Detection: Revolutionizing Apple Orchard Health;2023 4th International Conference on Big Data Analytics and Practices (IBDAP);2023-08-25
5. Automatic Leaf Disease Detection Using Convolution Neural Network;2023 International Conference on Computational Intelligence and Sustainable Engineering Solutions (CISES);2023-04-28