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Greedy BIT* (GBIT*) :Greedy Search Policy for Sampling-Based Optimal Planning with a Faster Initial Solution and Convergence

机译:贪婪的bit *(gbit *):贪婪的搜索政策,用于采样的基于采样的最优规划,具有更快的初始解决方案和收敛性

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This paper presents Greedy Batch Informed Trees (GBIT*), a greedy version of Batch Informed Trees (BIT*) and Advanced Batch Informed Trees (ABIT*) with a greedy search policy inspired by RRT-Connect. BIT* and ABIT* use an edge queue ordered by the (inflated) potential path cost to find the best next edge to process. GBIT* builds on ABIT* by adding another preferential way, which is defined by the greedy search policy, to choose the next edge to process. Otherwise, it will follow ABIT*’s method. The greedy search policy guides the search moving forward greedily and towards the goal, which can make it faster to find the initial solution. An earlier initial solution can lead to a faster upper bound to define the informed set and start the convergence process earlier. The experiment results show that in different maps, GBIT* can find an initial solution faster than any other sampling-based asymptotically optimal planners, as well as RRT-Connect in most cases.
机译:本文介绍了贪婪的批量通知树(Gbit *),讨论的批次版本的批量版本(bit *)和高级批量通知的树(Abit *),并通过RRT-Connect启发了一种灵感的贪婪搜索策略。位*和abit *使用(膨胀)潜在路径成本订购的边缘队列,以找到要处理的最佳下一边缘。 Gbit *通过添加另一种优先的方法来构建在ABIT *上,该优先方法由贪婪的搜索策略定义,以选择要进程的下一个边缘。否则,它将遵循abit *的方法。贪婪的搜索策略指导搜索贪婪地向前移动,朝向目标,这可以使其更快地找到初始解决方案。早期的初始解决方案可能导致更快的上限,以定义知情集并以前启动融合过程。实验结果表明,在不同的地图中,Gbit *可以在大多数情况下找到比任何其他采样的渐近最佳策划者更快的初始解决方案,以及大多数情况下的RRT-Connect。

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