Early Detection of Paddy Crop Diseases Using Drone Images and Machine Learning–Deep Learning Techniques
Keywords:
Abstract
Global food security is seriously threatened by paddy diseases, which have the ability to reduce yearly harvests by 20–40%. An automated approach for targeted pesticide distribution and real-time paddy disease detection is presented in this research. A high-resolution camera-equipped drone (Drone 1) takes live field images and sends them to a cloud platform over Wi-Fi. A hybrid deep learning model that combines EfficientNet-B7 and an Improved Swin Transformer is used to extract disease features from images after they have been denoised using a Modified Non-Local Means Filter (M-NLMF). The leaf state is then divided into four groups by an Extreme Learning Machine (ELM) 4 classes. Once the disease is confirmed, a second drone (Drone 2) finds the GPS-tagged diseased area on its own and exclusively sprays the afflicted plants with pesticide. The technology drastically lowers chemical waste and environmental impact while achieving 99.30% classification accuracy.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.