Proximity Queries for Absolutely Continuous Parametric Curves
Abstract
In motion planning problems for autonomous robots, such as self-driving cars, the robot must ensure that its planned path is not in close proximity to obstacles in the environment. However, the problem of evaluating the proximity is generally non-convex and serves as a significant computational bottleneck for motion planning algorithms. In this paper, we present methods for a general class of absolutely continuous parametric curves to compute: (i) the minimum separating distance, (ii) tolerance verification, and (iii) collision detection. Our methods efficiently compute bounds on obstacle proximity by bounding the curve in a convex region. This bound is based on an upper bound on the curve arc length that can be expressed in closed form for a useful class of parametric curves including curves with trigonometric or polynomial bases. We demonstrate the computational efficiency and accuracy of our approach through numerical simulations of several proximity problems.
Cite
@article{arxiv.1902.05027,
title = {Proximity Queries for Absolutely Continuous Parametric Curves},
author = {Arun Lakshmanan and Andrew Patterson and Venanzio Cichella and Naira Hovakimyan},
journal= {arXiv preprint arXiv:1902.05027},
year = {2019}
}
Comments
Proceedings of Robotics: Science and Systems