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Avoiding Dense and Dynamic Obstacles in Enclosed Spaces: Application to Moving in a Simulated Crowd

2021-05-25 08:22:11
Lukas Huber, Jean-Jacques, Slotine Aude Billard

Abstract

This paper presents a closed-form approach to constrain a flow within a given volume and around objects. The flow is guaranteed to converge and to stop at a single fixed point. We show that the obstacle avoidance problem can be inverted to enforce that the flow remains enclosed within a volume defined by a polygonal surface. We formally guarantee that such a flow will never contact the boundaries of the enclosing volume and obstacles, and will asymptotically converge towards an attractor. We further create smooth motion fields around obstacles with edges (e.g. tables). The technique enables a robot to navigate within an enclosed corridor while avoiding static and moving obstacles. It is applied on an autonomous robot (QOLO) in a static complex indoor environment and also tested in simulations with dense crowds.

Abstract (translated)

URL

https://arxiv.org/abs/2105.11743

PDF

https://arxiv.org/pdf/2105.11743.pdf


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