Efficient Sampling-based Multirotors Kinodynamic Planning with Fast Regional Optimization and Post Refining

2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2022)

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摘要
For real-time multirotor kinodynamic 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 bidirectional global sampling process. The incorporation of the local optimization shows significantly improved success rates and less planning time in various types of challenging environments. We further present a refinement module utilizing the same framework as the regional optimizer. It comprehensively investigates the resulting trajectory of the global sampling and improves its smoothness with nearly negligible computation effort. Benchmark results illustrate that our proposed method can better exploit a previous trajectory compared to the state-of-the-art ones. The planning methods are applied to generate trajectories for a quadrotor system in simulation and realworld, and their capability is validated in real-time applications.
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关键词
bidirectional global sampling process,difficult-to-sample homotopy classes,efficient sampling-based multirotors kinodynamic planning,fast regional optimization,fast regional optimizer,hybrid scheme,local environments,local optimization,narrow passages,planning methods,planning time,post refining,real-time applications,real-time multirotor kinodynamic planning,refinement module,sampling-based methods
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