论文标题
可耕作的视觉惯性探针测定系统的实验评估
Experimental Evaluation of Visual-Inertial Odometry Systems for Arable Farming
论文作者
论文摘要
农业行业不断寻求与农业生产有关的不同过程的自动化,例如播种,收获和杂草控制。使用移动自主机器人执行这些任务引起了极大的兴趣。耕地面向同时定位和映射(SLAM)系统(移动机器人的关键)面临着艰巨的挑战,这是由于视觉上的难度,这是由于高度重复的场景而引起的,并且由风引起的农作物叶子运动。 近年来,已经开发了几种视觉惯性进程(VIO)和大满贯系统。事实证明,它们在室内和室外城市环境中具有很高的精度。但是,在农业领域未正确评估它们。在这项工作中,我们从可耕地上的准确性和处理时间方面评估了最相关的最新VIO系统,以便更好地了解它们在这些环境中的行为。特别是,该评估是在我们的车轮机器人在大豆领域中记录的传感器数据集合进行的,该机器人作为Rosario数据集公开发布。评估表明,环境的高度重复性外观,崎rough的地形产生的强振动以及由风引起的叶子的运动,暴露了当前最新的VIO和SLAM系统的局限性。我们分析了系统故障并突出显示的缺点,包括初始化故障,跟踪损耗和对IMU饱和的敏感性。最后,我们得出的结论是,即使某些系统(例如Orb-Slam3和S-MSCKF)在其他系统方面表现出良好的结果,但应采取更多改进,以使其在农业领域可靠,以供某些施用,例如农作物行的土壤耕作和农药喷涂。
The farming industry constantly seeks the automation of different processes involved in agricultural production, such as sowing, harvesting and weed control. The use of mobile autonomous robots to perform those tasks is of great interest. Arable lands present hard challenges for Simultaneous Localization and Mapping (SLAM) systems, key for mobile robotics, given the visual difficulty due to the highly repetitive scene and the crop leaves movement caused by the wind. In recent years, several Visual-Inertial Odometry (VIO) and SLAM systems have been developed. They have proved to be robust and capable of achieving high accuracy in indoor and outdoor urban environments. However, they were not properly assessed in agricultural fields. In this work we assess the most relevant state-of-the-art VIO systems in terms of accuracy and processing time on arable lands in order to better understand how they behave on these environments. In particular, the evaluation is carried out on a collection of sensor data recorded by our wheeled robot in a soybean field, which was publicly released as the Rosario Dataset. The evaluation shows that the highly repetitive appearance of the environment, the strong vibration produced by the rough terrain and the movement of the leaves caused by the wind, expose the limitations of the current state-of-the-art VIO and SLAM systems. We analyze the systems failures and highlight the observed drawbacks, including initialization failures, tracking loss and sensitivity to IMU saturation. Finally, we conclude that even though certain systems like ORB-SLAM3 and S-MSCKF show good results with respect to others, more improvements should be done to make them reliable in agricultural fields for certain applications such as soil tillage of crop rows and pesticide spraying.