Paper ID: 2412.13490 • Published Dec 18, 2024
Comparative Analysis of YOLOv9, YOLOv10 and RT-DETR for Real-Time Weed Detection
TL;DR
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This paper presents a comprehensive evaluation of state-of-the-art object
detection models, including YOLOv9, YOLOv10, and RT-DETR, for the task of weed
detection in smart-spraying applications focusing on three classes: Sugarbeet,
Monocot, and Dicot. The performance of these models is compared based on mean
Average Precision (mAP) scores and inference times on different GPU and CPU
devices. We consider various model variations, such as nano, small, medium,
large alongside different image resolutions (320px, 480px, 640px, 800px,
960px). The results highlight the trade-offs between inference time and
detection accuracy, providing valuable insights for selecting the most suitable
model for real-time weed detection. This study aims to guide the development of
efficient and effective smart spraying systems, enhancing agricultural
productivity through precise weed management.