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A Duality-based Approach for Real-time Obstacle Avoidance between Polytopes with Control Barrier Functions

18 July 2021
A. Thirugnanam
Jun Zeng
Koushil Sreenath
ArXiv (abs)PDFHTML
Abstract

Developing controllers for obstacle avoidance between polytopes is a challenging and necessary problem for navigation in tight spaces. Traditional approaches can only formulate the obstacle avoidance problem as an offline optimization problem. To address these challenges, we propose a duality-based safety-critical optimal control using nonsmooth control barrier functions for obstacle avoidance between polytopes, which can be solved in real-time with a QP-based optimization problem. A dual optimization problem is introduced to represent the minimum distance between polytopes and the Lagrangian function for the dual form is applied to construct a control barrier function. We validate the obstacle avoidance with the proposed dual formulation for L-shaped (sofa-shaped) controlled robot in a corridor environment. To the best of our knowledge, this is the first time that real-time tight obstacle avoidance with non-conservative maneuvers is achieved on a moving sofa (piano) problem with nonlinear dynamics.

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