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Using Local Experiences for Global Motion Planning

机译:利用本地经验进行全球行动计划

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Sampling-based planners are effective in many real-world applications such as robotics manipulation, navigation, and even protein modeling. However, it is often challenging to generate a collision-free path in environments where key areas are hard to sample. In the absence of any prior information, sampling-based planners are forced to explore uniformly or heuristically, which can lead to degraded performance. One way to improve performance is to use prior knowledge of environments to adapt the sampling strategy to the problem at hand. In this work, we decompose the workspace into local primitives, memorizing local experiences by these primitives in the form of local samplers, and store them in a database. We synthesize an efficient global sampler by retrieving local experiences relevant to the given situation. Our method transfers knowledge effectively between diverse environments that share local primitives and speeds up the performance dramatically. Our results show, in terms of solution time, an improvement of multiple orders of magnitude in two traditionally challenging high-dimensional problems compared to state-of-the-art approaches.
机译:基于采样的计划程序在许多实际应用中都很有效,例如机器人操纵,导航,甚至蛋白质建模。但是,在难以采样关键区域的环境中生成无碰撞路径通常是具有挑战性的。在没有任何先验信息的情况下,基于采样的计划人员被迫统一或启发式地进行探索,这可能导致性能下降。改善性能的一种方法是利用环境的先验知识使采样策略适应当前的问题。在这项工作中,我们将工作空间分解为本地原语,以本地采样器的形式存储这些原语的本地体验,并将其存储在数据库中。我们通过检索与给定情况相关的本地经验来合成高效的全球采样器。我们的方法在共享本地原语的不同环境之间有效地传递知识,并极大地提高了性能。我们的结果表明,与最新方法相比,在求解时间方面,两个传统上具有挑战性的高维问题均提高了多个数量级。

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