Publication Type : Conference Proceedings
Publisher : IEEE
Url : https://doi.org/10.1109/ICFCR64128.2024.10763186
Keywords : Deep learning;YOLO;Precision agriculture;Accuracy;Spraying;Pesticides;Predictive models;Real-time systems;Diseases;Drones;Precision agriculture;Drone technology;Deep learning;Crop disease detection;Sustainable farming;Disease management
Campus : Coimbatore
School : School of Engineering
Year : 2024
Abstract : Precision agriculture is transforming crop management by leveraging technology to optimize yields and minimize environmental impact. This research presents a cutting-edge system, CapsNet-Yolo, which integrates Capsule Networks (CapsNet) and YOLO v8 models for real-time tomato disease identification and targeted pesticide application using drones. The approach employs drones equipped with advanced sensors to capture detailed aerial imagery of tomato crops. The captured images are processed by deep learning models, combining the strengths of CapsN et for robust feature extraction and YOLO v8 for efficient object detection. Upon identifying diseased plants, the system autonomously triggers precise pesticide spraying, ensuring efficient resource utilization and reducing environmental harm.
Cite this Research Publication : Sujan Surya Konda, Kalpesh Prabhakar, Ram Narayan Bolla, Vasantraj Padmanaban, Boopathy C. P, CapsNet-Yolo: A Novel Deep Learning Approach for Real Time Tomato Disease Identification Synergised with Drone Technology and Pesticide Spraying, [source], IEEE, 2024, https://doi.org/10.1109/ICFCR64128.2024.10763186