Article ID Journal Published Year Pages File Type
414878 Computational Geometry 2009 17 Pages PDF
Abstract

The probabilistic roadmap algorithm is a leading heuristic for robot motion planning. It is extremely efficient in practice, yet its worst case convergence time is unbounded as a function of the input's combinatorial complexity. We prove a smoothed polynomial upper bound on the number of samples required to produce an accurate probabilistic roadmap, and thus on the running time of the algorithm, in an environment of simplices. This sheds light on its widespread empirical success.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics