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首页> 外文期刊>The International journal of robotics research >Continuous-time Gaussian process motion planning via probabilistic inference
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Continuous-time Gaussian process motion planning via probabilistic inference

机译:通过概率推理进行连续时间高斯过程运动规划

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摘要

We introduce a novel formulation of motion planning, for continuous-time trajectories, as probabilistic inference. We first show how smooth continuous-time trajectories can be represented by a small number of states using sparse Gaussian process (GP) models. We next develop an efficient gradient-based optimization algorithm that exploits this sparsity and GP interpolation. We call this algorithm the Gaussian Process Motion Planner (GPMP). We then detail how motion planning problems can be formulated as probabilistic inference on a factor graph. This forms the basis for GPMP2, a very efficient algorithm that combines GP representations of trajectories with fast, structure-exploiting inference via numerical optimization. Finally, we extend GPMP2 to an incremental algorithm, iGPMP2, that can efficiently replan when conditions change. We benchmark our algorithms against several sampling-based and trajectory optimization-based motion planning algorithms on planning problems in multiple environments. Our evaluation reveals that GPMP2 is several times faster than previous algorithms while retaining robustness. We also benchmark iGPMP2 on replanning problems, and show that it can find successful solutions in a fraction of the time required by GPMP2 to replan from scratch.
机译:我们介绍了一种针对连续时间轨迹的运动计划的新颖表述,作为概率推断。我们首先展示使用稀疏高斯过程(GP)模型如何用少量状态表示平滑的连续时间轨迹。接下来,我们将开发一种有效的基于梯度的优化算法,该算法可利用这种稀疏性和GP插值。我们将此算法称为高斯过程运动计划器(GPMP)。然后,我们详细介绍如何将运动计划问题表达为因子图上的概率推断。这构成了GPMP2的基础,GPMP2是一种非常有效的算法,通过数值优化将轨迹的GP表示与快速的结构利用推理相结合。最后,我们将GPMP2扩展为增量算法iGPMP2,该算法可以在条件变化时有效地重新计划。我们针对多种环境下的规划问题,针对几种基于采样和基于轨迹优化的运动规划算法对算法进行了基准测试。我们的评估表明,GPMP2在保持鲁棒性的同时比以前的算法快了好几倍。我们还针对重新规划问题对iGPMP2进行了基准测试,并表明它可以在GPMP2从头开始进行重新规划所需的时间中找到成功的解决方案。

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