For real-time multirotor kinodynamic motion planning, the efficiency of sampling-based methods is usually hindered by difficult-to-sample homotopy classes like narrow passages. In this paper, we address this issue by a hybrid scheme. We firstly propose a fast regional optimizer exploiting the information of local environments and then integrate it into a global sampling process to ensure faster convergence. The incorporation of local optimization on different sampling-based methods shows significantly improved success rates and less planning time in various types of challenging environments. We also present a refinement module that fully investigates the resulting trajectory of the global sampling and greatly improves its smoothness with negligible computation effort. Benchmark results illustrate that compared to the state-of-the-art ones, our proposed method can better exploit a previous trajectory. The planning methods are applied to generate trajectories for a simulated quadrotor system, and its capability is validated in real-time applications.
翻译:对于实时多色体动力运动规划而言,基于取样方法的效率通常受到难以模拟的单质类(如狭小的通道)的阻碍。在本文件中,我们通过混合办法处理这一问题。我们首先提议快速区域优化利用当地环境的信息,然后将其纳入全球采样过程,以确保更快的趋同。将地方优化纳入不同采样方法,表明不同类型具有挑战性的环境中的成功率显著提高,规划时间缩短。我们还提出了一个完善模块,充分调查全球采样的轨迹,并大大改善采样的顺利性,同时进行微小的计算。基准结果显示,与最先进的方法相比,我们拟议的方法可以更好地利用以前的轨迹。规划方法被用来生成模拟象形钻探系统的轨迹,其能力在实时应用中得到验证。