CuRobo: Parallelized Collision-Free Robot Motion Generation

ICRA(2023)

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摘要
This paper explores the problem of collision-free motion generation for manipulators by formulating it as a global motion optimization problem. We develop a parallel optimization technique to solve this problem and demonstrate its effectiveness on massively parallel GPUs. We show that combining simple optimization techniques with many parallel seeds leads to solving difficult motion generation problems within 53ms on average, 62x faster than SOTA trajectory optimization methods. We achieve SOTA performance by combining L-BFGS step direction estimation with a novel parallel noisy line search scheme and a particle-based optimization solver. To further aid trajectory optimization, we develop a parallel geometric planner that is atleast 28x faster than SOTA RRTConnect implementations. We also introduce a collision-free IK solver that can solve over 9000 queries/s. We are releasing our GPU accelerated library CuRobo that contains core components for robot motion generation. Additional details are available at sites.google.com/nvidia.com/curobo.
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关键词
collision-free IK solver,collision-free motion generation,global motion optimization problem,GPU accelerated library CuRobo,L-BFGS step direction estimation,massively parallel GPU,motion generation problems,parallel geometric planner,parallel noisy line search scheme,parallel optimization technique,parallel seeds,parallelized collision-free robot motion generation,particle-based optimization solver,simple optimization techniques,SOTA performance,SOTA RRTConnect implementations,SOTA trajectory optimization methods,trajectory optimization
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