Adaptive path planning for efficient object search by UAVs in agricultural fields

IF 5.7 Q1 AGRICULTURAL ENGINEERING
Rick van Essen , Eldert van Henten , Lammert Kooistra , Gert Kootstra
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引用次数: 0

Abstract

This paper presents an adaptive path planner for object search in agricultural fields using UAVs. The path planner uses a high-altitude coverage flight path and plans additional low-altitude inspections when the detection network is uncertain. The path planner was evaluated in an offline simulation environment containing real-world images. We trained a YOLOv8 detection network to detect artificial plants placed in grass fields to showcase the potential of our path planner. We evaluated the effect of different detection certainty measures, optimized the path planning parameters, investigated the effects of localization errors, and different numbers of objects in the field. The YOLOv8 detection confidence worked best to differentiate between true and false positive detections and was therefore used in the adaptive planner. The optimal parameters of the path planner depended on the distribution of objects in the field. When the objects were uniformly distributed, more low-altitude inspections were needed compared to a non-uniform distribution of objects, resulting in a longer path length. The adaptive planner proved to be robust against localization uncertainty. When increasing the number of objects, the flight path length increased, especially when the objects were uniformly distributed. When the objects were non-uniformly distributed, the adaptive path planner yielded a shorter path than a low-altitude coverage path, even with a high number of objects. Overall, the presented adaptive path planner allowed finding non-uniformly distributed objects in a field faster than a coverage path planner and resulted in a compatible detection accuracy. The path planner is made available at https://github.com/wur-abe/uav_adaptive_planner.
农业无人机高效目标搜索的自适应路径规划
提出了一种用于无人机农业领域目标搜索的自适应路径规划器。路径规划器使用高空覆盖飞行路径,并在探测网络不确定时计划额外的低空检查。在包含真实图像的离线仿真环境中对路径规划器进行了评估。我们训练了一个YOLOv8检测网络来检测放置在草地上的人造植物,以展示我们的路径规划器的潜力。我们评估了不同检测确定性措施的效果,优化了路径规划参数,研究了定位误差和不同目标数量的影响。YOLOv8检测置信度在区分真阳性和假阳性检测方面效果最好,因此在自适应规划中使用。路径规划器的最优参数取决于目标在场地中的分布。当目标均匀分布时,与目标不均匀分布相比,需要更多的低空检测,从而导致更长的路径长度。该自适应规划器对定位不确定性具有较强的鲁棒性。随着目标数量的增加,飞行路径长度增加,特别是当目标均匀分布时。当目标不均匀分布时,即使目标数量多,自适应路径规划器产生的路径也比低空覆盖路径短。总体而言,所提出的自适应路径规划器可以比覆盖路径规划器更快地发现领域中非均匀分布的目标,并产生兼容的检测精度。路径规划器可在https://github.com/wur-abe/uav_adaptive_planner上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.20
自引率
0.00%
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