Unitem, ul. Kominiarska 42C, 51-180 Wrocław, Poland.
Faculty of Electronics, Wrocław University of Science and Technology, Wybrzeże Wyspiańskiego 27, 50-370 Wrocław, Poland.
Sensors (Basel). 2021 Aug 5;21(16):5292. doi: 10.3390/s21165292.
Mobile robots designed for agricultural tasks need to deal with challenging outdoor unstructured environments that usually have dynamic and static obstacles. This assumption significantly limits the number of mapping, path planning, and navigation algorithms to be used in this application. As a representative case, the autonomous lawn mowing robot considered in this work is required to determine the working area and to detect obstacles simultaneously, which is a key feature for its working efficiency and safety. In this context, RGB-D cameras are the optimal solution, providing a scene image including depth data with a compromise between precision and sensor cost. For this reason, the obstacle detection effectiveness and precision depend significantly on the sensors used, and the information processing approach has an impact on the avoidance performance. The study presented in this work aims to determine the obstacle mapping accuracy considering both hardware- and information processing-related uncertainties. The proposed evaluation is based on artificial and real data to compute the accuracy-related performance metrics. The results show that the proposed image and depth data processing pipeline introduces an additional distortion of 38 cm.
用于农业任务的移动机器人需要应对具有动态和静态障碍物的挑战性户外非结构化环境。这一假设极大地限制了可用于此应用的映射、路径规划和导航算法的数量。作为一个代表性案例,本工作中所考虑的自主草坪修剪机器人需要同时确定工作区域和检测障碍物,这是提高其工作效率和安全性的关键特征。在这种情况下,RGB-D 相机是最佳解决方案,它提供了包括深度数据的场景图像,在精度和传感器成本之间取得了折衷。出于这个原因,障碍物检测的有效性和精度在很大程度上取决于所使用的传感器,而信息处理方法对避障性能有影响。本工作旨在确定考虑硬件和信息处理相关不确定性的障碍物映射精度。所提出的评估基于人工和真实数据来计算与精度相关的性能指标。结果表明,所提出的图像和深度数据处理管道会引入 38 厘米的额外失真。