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Risk-Aware Control for Robots with Non-Gaussian Belief Spaces

Matti Vahs, Jana Tumova

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Abstract

This paper addresses the problem of safety-critical control of autonomous robots, considering the ubiquitous un- certainties arising from unmodeled dynamics and noisy sensors. To take into account these uncertainties, probabilistic state estimators are often deployed to obtain a belief over possible states. Namely, Particle Filters (PFs) can handle arbitrary non- Gaussian distributions in the robot’s state. In this work, we define the belief state and belief dynamics for continuous- discrete PFs and construct safe sets in the underlying belief space. We design a controller that provably keeps the robot’s belief state within this safe set. As a result, we ensure that the risk of the unknown robot’s state violating a safety specification, such as avoiding a dangerous area, is bounded. We provide an open-source implementation as a ROS2 package and evaluate the solution in simulations and hardware experiments involving high-dimensional belief spaces.

Index terms

Robot Safety Planning under Uncertainty Collision Avoidance