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Mixtures of Gaussian Processes for Robot Motion Planning Using Stochastic Trajectory Optimization (CROSBI ID 307178)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Petrović, Luka ; Marković, Ivan ; Petrović, Ivan Mixtures of Gaussian Processes for Robot Motion Planning Using Stochastic Trajectory Optimization // IEEE Transactions on Systems Man Cybernetics-Systems, 1 (2022), 1-13. doi: 10.1109/tsmc.2022.3155378

Podaci o odgovornosti

Petrović, Luka ; Marković, Ivan ; Petrović, Ivan

engleski

Mixtures of Gaussian Processes for Robot Motion Planning Using Stochastic Trajectory Optimization

Robot motion planning methods based on trajectory optimization can efficiently generate feasible and optimal trajectories by minimizing a suitable cost function, even in high-dimensional spaces. However, the main drawback of these methods lies in their proneness to infeasible local minima, especially in complex environments. To mitigate this issue, we propose a novel motion planning method that represents trajectories as samples from a mixture of continuous-time Gaussian processes (MGP) and employs stochastic optimization in order to update the MGP parameters in a cost-minimizing manner. The contributions of the proposed trajectory optimization method arise from the introduced mixture representation and stochastic gradient estimation, dominantly enabling better exploration of the trajectory space and including nondifferentiable optimizing costs. We evaluated the proposed method in multiple simulation benchmarks featuring 7, degree-of-freedom (DOF) robot arms and a 10, DOF mobile manipulator. We also conducted a real-world experiment with a 14, DOF dual-arm robot. The experimental results demonstrated that the proposed method achieves higher success rate than several state-of-the-art methods, while the advantages stemming from MGPs and stochastic optimization, like trajectory smoothness, support of nondifferentiable cost functions, multiple trajectory solutions, and the ability to tackle high-dimensional planning problems, are inherently kept.

High-dimensional motion planning ; mixtures of Gaussian processes ; trajectory optimization ; stochastic optimization

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Podaci o izdanju

1

2022.

1-13

objavljeno

2168-2216

2168-2232

10.1109/tsmc.2022.3155378

Povezanost rada

Elektrotehnika, Informacijske i komunikacijske znanosti, Interdisciplinarne tehničke znanosti, Računarstvo, Temeljne tehničke znanosti

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