Sampling-based motion planners rely on incremental densification to discover progressively shorter paths. After computing feasible path $\xi$ between start $x_s$ and goal $x_t$, the Informed Set (IS) prunes the configuration space $\mathcal{C}$ by conservatively eliminating points that cannot yield shorter paths. Densification via sampling from this Informed Set retains asymptotic optimality of sampling from the entire configuration space. For path length $c(\xi)$ and Euclidean heuristic $h$, $IS = \{ x | x \in \mathcal{C}, h(x_s, x) + h(x, x_t) \leq c(\xi) \}$. Relying on the heuristic can render the IS especially conservative in high dimensions or complex environments. Furthermore, the IS only shrinks when shorter paths are discovered. Thus, the computational effort from each iteration of densification and planning is wasted if it fails to yield a shorter path, despite improving the cost-to-come for vertices in the search tree. Our key insight is that even in such a failure, shorter paths to vertices in the search tree (rather than just the goal) can immediately improve the planner's sampling strategy. Guided Incremental Local Densification (GuILD) leverages this information to sample from Local Subsets of the IS. We show that GuILD significantly outperforms uniform sampling of the Informed Set in simulated $\mathbb{R}^2$, $SE(2)$ environments and manipulation tasks in $\mathbb{R}^7$.
翻译:以抽样为基础的运动规划者依靠递增密度来发现越来越短的路径 。 { 以递增密度为基准的动作规划者依靠递增密度来发现越来越短的路径 { 。 在计算了从开始的美元到目标的美元之间的可行的路径 $xx$xx$xxx$x$t$t$x美元之后, 知情的Set (IS) 以保守的方式消除无法产生较短路径的配置空间$\ mathcal{ C} 美元 。 通过从这个知情的Set 取样的抑制使整个配置空间的采样保持不那么简单的最佳性 。 对于路径长度 $c(xxx) 和 Euclclidecal $xxxxxxxxxxxxxxxxxxx_t$xt$xxxxxxxxxxxxxxxxxxxxxxxxxx\leqcxxxxxxxx} =xxxxxx} =xxxxxxxxxxxx} 美元。 通过保守配置空间Setsmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmmm) =xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx