2019
DOI: 10.1109/access.2019.2933067
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Speeding up Gaussian Belief Space Planning for Underwater Robots Through a Covariance Upper Bound

Abstract: Existing belief space motion planning methods are not efficient for underwater robots that are subject to spatially varying motion and sensing uncertainties arising from the non-uniform current disturbances and landmark populations, respectively. Based on a closed-loop stochastic control framework, we propose a fast Gaussian belief space planning approach for coupled optimization of trajectory, localization and control, resulting in a non-linear programming problem (NLP). In particular, as opposed to advancing… Show more

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Cited by 3 publications
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References 47 publications
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“…RRT-Connect has been successfully used in complex environments, including underwater navigation [Yu et al, 2019], and shows a remarkable ability to find valid paths in C-free subspaces with severe narrowings.…”
Section: Rapidly Exploring Random Tree (Rrt)mentioning
confidence: 99%
“…RRT-Connect has been successfully used in complex environments, including underwater navigation [Yu et al, 2019], and shows a remarkable ability to find valid paths in C-free subspaces with severe narrowings.…”
Section: Rapidly Exploring Random Tree (Rrt)mentioning
confidence: 99%