An autonomous navigation method for field phenotyping robot based on ground-air collaboration

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Zikang Zhang , Zhengda Li , Meng Yang , Jiale Cui , Yang Shao , Youchun Ding , Wanneng Yang , Wen Qiao , Peng Song
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引用次数: 0

Abstract

High-throughput phenotyping collection technology is important in affecting the efficiency of crop breeding. This study introduces a novel autonomous navigation method for phenotyping robots that leverages ground-air collaboration to meet the demands of unmanned crop phenotypic data collection. The proposed method employs a UAV equipped with a Real-Time Kinematic (RTK) module for the construction of high-precision Field maps. It utilizes SegFormor-B0 semantic segmentation models to detect crop rows, and extracts key coordinate points of these rows, and generates navigation paths for the phenotyping robots by mapping these points to actual geographic coordinates. Furthermore, an adaptive controller based on the Pure Pursuit algorithm is proposed, which dynamically adjusts the steering angle of the phenotyping robot in real-time, according to the distance (d), angular deviation (α) and the lateral deviation (ey) between the robot's current position and its target position. This enables the robot to accurately trace paths in field environments. The results demonstrate that the mean absolute error (MAE) of the proposed method in extracting the centerline of potted plants area's rows is 2.83 cm, and the cropland's rows is 4.51 cm. The majority of global path tracking errors stay within 2 cm. In the potted plants area, 99.1 % of errors lie within this range, with a mean absolute error of 0.62 cm and a maximum error of 2.59 cm. In the cropland, 72.4 % of errors remain within this range, with a mean absolute error of 1.51 cm and a maximum error of 4.22 cm. Compared with traditional GNSS-based navigation methods and single vision methods, this method shows significant advantages in adapting to the dynamic growth of crops and complex field environments, which not only ensures that the phenotyping robot accurately travels along the crop rows during field operations to avoid damage to the crops, but also provides an efficient and accurate means of data acquisition for crop phenotyping.
基于地空协同的现场分型机器人自主导航方法
高通量表型收集技术是影响作物育种效率的重要技术之一。本研究介绍了一种新型的表型机器人自主导航方法,该方法利用地空协作来满足无人作物表型数据收集的需求。该方法采用一种配备实时运动学(RTK)模块的无人机来构建高精度的野外地图。它利用SegFormor-B0语义分割模型检测作物行,提取这些行的关键坐标点,并将这些点映射到实际地理坐标,为表型机器人生成导航路径。在此基础上,提出了一种基于Pure Pursuit算法的自适应控制器,根据机器人当前位置与目标位置之间的距离(d)、角度偏差(α)和横向偏差(ey),实时动态调整表型机器人的转向角度。这使机器人能够在现场环境中准确地跟踪路径。结果表明,该方法提取盆栽区行中心线的平均绝对误差(MAE)为2.83 cm,农田行中心线的平均绝对误差为4.51 cm。大多数全局路径跟踪误差保持在2cm以内。在盆栽区域,99.1%的误差在此范围内,平均绝对误差为0.62 cm,最大误差为2.59 cm。在农田中,72.4%的误差保持在该范围内,平均绝对误差为1.51 cm,最大误差为4.22 cm。与传统的基于gnss的导航方法和单视觉方法相比,该方法在适应作物的动态生长和复杂的田间环境方面具有明显的优势,不仅保证了表型机器人在田间作业中准确地沿着作物行移动,避免对作物造成损害,而且为作物表型分析提供了一种高效、准确的数据采集手段。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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