2022
DOI: 10.48550/arxiv.2203.01751
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BITKOMO: Combining Sampling and Optimization for Fast Convergence in Optimal Motion Planning

Abstract: Optimal sampling based motion planning and trajectory optimization are two competing frameworks to generate optimal motion plans. Both frameworks have complementary properties: Sampling based planners are typically slow to converge, but provide optimality guarantees. Trajectory optimizers, however, are typically fast to converge, but do not provide global optimality guarantees in nonconvex problems, e.g. scenarios with obstacles. To achieve the best of both worlds, we introduce a new planner, BITKOMO, which in… Show more

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