Researchers have developed a framework for deploying weed detection models on resource-constrained UAVs for site-specific management. The study evaluated various object detection models, including YOLO and RT-DETR variants, across different edge devices like Jetson Orin Nano and Jetson AGX Xavier. Results indicated a trade-off between detection accuracy and computational efficiency, with high-capacity models achieving better accuracy but slower inference times. Lightweight models offered real-time performance, and RT-DETRv2-R50-M and YOLOv11s emerged as strong candidates for balancing accuracy and speed in practical UAV applications. AI
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IMPACT Provides insights into optimizing AI model deployment for real-time edge applications in agriculture.
RANK_REASON This is a research paper evaluating existing models for a specific application.