Resource-Constrained UAV-Based Weed Detection for Site-Specific Management on Edge Devices
Linyuan Wang, Haibo Yao, Te-Ming Tseng, Kelvin Betitame, Xin Sun, Hanbo Huang, and Dong Chen

TL;DR
This paper evaluates various deep learning models for real-time weed detection on UAV edge devices, balancing accuracy and computational efficiency under resource constraints.
Contribution
It introduces a deployment-oriented framework and systematically compares state-of-the-art models on multiple edge hardware platforms for UAV-based weed detection.
Findings
Lightweight models achieve 66%-71% mAP50 with low latency.
RT-DETRv2-R50-M achieves 79% mAP50 with good efficiency.
YOLOv11s and RT-DETRv2-R50-M balance accuracy and speed effectively.
Abstract
Weeds compete with crops for light, water, and nutrients, reducing yield and crop quality. Efficient weed detection is essential for site-specific weed management (SSWM). Although deep learning models have been deployed on UAV-based edge systems, a systematic understanding of how different model architectures perform under real-world resource constraints is still lacking. To address this gap, this study proposes a deployment-oriented framework for real-time UAV-based weed detection on resource-constrained edge platforms. The framework integrates UAV data acquisition, model development, and on-device inference, with a focus on balancing detection accuracy and computational efficiency. A diverse set of state-of-the-art object detection models is evaluated, including convolution-based YOLO models (v8-v12) and transformer-based RT-DETR models (v1-v2). Experiments on three edge devices…
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