Search-based methods that use motion primitives can incorporate the system's dynamics into the planning and thus generate dynamically feasible MAV trajectories that are globally optimal. However, searching high-dimensional state lattices is computationally expensive. Local multiresolution is a commonly used method to accelerate spatial path planning. While paths within the vicinity of the robot are represented at high resolution, the representation gets coarser for more distant parts. In this work, we apply the concept of local multiresolution to high-dimensional state lattices that include velocities and accelerations. Experiments show that our proposed approach significantly reduces planning times. Thus, it increases the applicability to large dynamic environments, where frequent replanning is necessary.
翻译:使用运动原始体的基于搜索的方法可以将系统的动态纳入规划,从而产生全球最佳的动态可行的MAV轨迹。 但是,搜索高维状态轨迹是计算成本昂贵的。 本地多分辨率是加速空间路径规划的常用方法。 虽然机器人附近路径的分辨率较高,但偏僻部分的表示器变粗。 在这项工作中,我们将本地多分辨率的概念应用到包括速度和加速度在内的高维状态轨迹中。 实验显示,我们提议的方法大大缩短了规划时间。 因此,它增加了对大型动态环境的可应用性,需要经常进行再规划。