拖拉机在有障碍物农田中的路线规划

Feriel Fass, D. Ziou, Nassima Kadri
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引用次数: 0

摘要

在本文中,我们提出了一种轨道规划方法的拖拉机在农村环境。我们的方法是基于离线和实时采集数据的同时使用。离线数据是假定已知的农业领域的地理地图,以及由几位经验丰富的驾驶员预先录制的车辆驾驶数据。车辆的深度视频和位置是实时获取的,并与现有数据一起用于探测和避开障碍物。规划是一个约束优化问题。这些限制与障碍物的存在有关,障碍物被认为是时空事件,通过它们在深度帧中表示的几何结构来识别。实际数据验证了该方法的有效性,满足了实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Route Planning for a Tractor in an Agriculture Field with Obstacles
In this article, we propose a trajectory planning method for a tractor in a rural environment. Our method is based on the simultaneous use of offline and real-time acquired data. The offline data is the geographical map of the agricultural field, which is assumed to be known, as well as vehicle driving data prerecorded by several experienced drivers. The depth video and the location of the vehicle are acquired in real time and used with existing data for the detection and avoidance of obstacles. The planning is seen as a constrained optimization problem. The constraints are related to the presence of obstacles which are considered as spatiotemporal events recognized through their geometric structure represented in the depth frames. We show that the proposed approach validated by using real data is effective and fulfills the real-time requirement.
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