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Geometric probability results for bounding path quality in sampling-based roadmaps after finite computation

机译:有限计算后基于采样的路线图中边界路径质量的几何概率结果

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Sampling-based algorithms provide efficient solutions to high-dimensional, geometrically complex motion planning problems. For these methods asymptotic results are known in terms of completeness and optimality. Previous work by the authors argued that such methods also provide probabilistic near-optimality after finite computation time using indications from Monte Carlo experiments. This work formalizes these guarantees and provides a bound on the probability of finding a near-optimal solution with PRM* after a finite number of iterations. This bound is proven for general-dimension Euclidean spaces and evaluated through simulation. These results are leveraged to create automated stopping criteria for PRM* and sparser near-optimal roadmaps, which have reduced running time and storage requirements.
机译:基于采样的算法为高维,几何复杂的运动规划问题提供了有效的解决方案。对于这些方法,就完备性和最优性而言,渐近结果是已知的。作者先前的工作认为,在有限的计算时间之后,这些方法还可以利用蒙特卡洛实验的指示来提供概率近乎最优的方法。这项工作使这些保证形式化,并为有限次数的迭代后用PRM *寻找近似最优解的可能性提供了界限。该界限已针对一般维欧几里德空间进行了证明,并通过仿真进行了评估。这些结果可用于为PRM *和稀疏的接近最佳路线图创建自动停止标准,从而减少了运行时间和存储需求。

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