Precision Agriculture
Precision agriculture employs advanced technologies to optimize farming practices, aiming to maximize yields while minimizing resource use and environmental impact. Current research heavily utilizes machine learning, particularly convolutional neural networks (CNNs) and vision transformers, along with other algorithms like XGBoost and SVMs, to analyze data from various sources including satellite imagery, drone surveys, and ground-based sensors for tasks such as weed detection, disease prediction, and soil moisture estimation. This data-driven approach enables more precise and efficient management of resources like fertilizers, pesticides, and irrigation, leading to improved crop production and sustainability. The integration of robotics and autonomous systems further enhances the capabilities of precision agriculture, automating tasks like spraying and data collection.
Papers
Investigating the Segment Anything Foundation Model for Mapping Smallholder Agriculture Field Boundaries Without Training Labels
Pratyush Tripathy, Kathy Baylis, Kyle Wu, Jyles Watson, Ruizhe Jiang
Scarecrow monitoring system:employing mobilenet ssd for enhanced animal supervision
Balaji VS, Mahi AR, Anirudh Ganapathy PS, Manju M
WeedScout: Real-Time Autonomous blackgrass Classification and Mapping using dedicated hardware
Matthew Gazzard, Helen Hicks, Isibor Kennedy Ihianle, Jordan J. Bird, Md Mahmudul Hasan, Pedro Machado
Semi-Self-Supervised Domain Adaptation: Developing Deep Learning Models with Limited Annotated Data for Wheat Head Segmentation
Alireza Ghanbari, Gholamhassan Shirdel, Farhad Maleki