异方差高斯过程轨迹规划的随机优化

Luka Petrović, Juraj Peršić, Marija Seder, Ivan Marković
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引用次数: 7

摘要

运动规划的轨迹优化方法试图生成最小化合适目标函数的轨迹。这种方法即使对高自由度的机器人也能有效地找到解。然而,在实践中,全局最优解往往是难以解决的,最先进的轨迹优化方法因此容易出现局部最小值,特别是在混乱的环境中。本文提出了一种基于交叉熵方法的随机优化运动规划算法来解决局部最小问题。我们将轨迹表示为来自连续时间高斯过程的样本,并引入异方差来生成更适合运动规划问题中避免碰撞的强大轨迹先验。我们的实验评估表明,与当前基于高斯过程的最先进轨迹优化方法(即GPMP2)相比,所提出的方法在复杂环境中对解空间的探索更彻底,成功率更高,同时执行时间相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Optimization for Trajectory Planning with Heteroscedastic Gaussian Processes
Trajectory optimization methods for motion planning attempt to generate trajectories that minimize a suitable objective function. Such methods efficiently find solutions even for high degree-of-freedom robots. However, a globally optimal solution is often intractable in practice and state-of-the-art trajectory optimization methods are thus prone to local minima, especially in cluttered environments. In this paper, we propose a novel motion planning algorithm that employs stochastic optimization based on the cross-entropy method in order to tackle the local minima problem. We represent trajectories as samples from a continuous-time Gaussian process and introduce heteroscedasticity to generate powerful trajectory priors better suited for collision avoidance in motion planning problems. Our experimental evaluation shows that the proposed approach yields a more thorough exploration of the solution space and a higher success rate in complex environments than a current Gaussian process based state-of-the-art trajectory optimization method, namely GPMP2, while having comparable execution time.
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