Learning Input Constrained Control Barrier Functions for Guaranteed Safety of Car-Like Robots

Brüggemann, Sven, Nightingale, Dominic, Silberman, Jack, de Oliveira, Maurício

arXiv.org Artificial Intelligence 

We propose a design method for a robust safety filter based on Input Constrained Control Barrier Functions (ICCBF) for car-like robots moving in complex environments. A robust ICCBF that can be efficiently implemented is obtained by learning a smooth function of the environment using Support Vector Machine regression. The method takes into account steering constraints and is validated in simulation and a real experiment.

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