Spatio-temporal Motion Planning for Autonomous Vehicles with Trapezoidal Prism Corridors and Bézier Curves - Robotics Institute Carnegie Mellon University

Spatio-temporal Motion Planning for Autonomous Vehicles with Trapezoidal Prism Corridors and Bézier Curves

Srujan Deolasee, Qin Lin, Jialun Li, and John M. Dolan
Conference Paper, Proceedings of the American Control Conference (ACC), pp. 3207-3214, May, 2023

Abstract

Safety-guaranteed motion planning is critical for self-driving cars to generate collision-free trajectories. A layered motion planning approach with decoupled path and speed planning is widely used for this purpose. This approach is prone to be suboptimal in the presence of dynamic obstacles. Spatial-temporal approaches deal with path planning and speed planning simultaneously; however, the existing methods only support simple-shaped corridors like cuboids, which restrict the search space for optimization in complex scenarios. We propose to use trapezoidal prism-shaped corridors for optimization, which significantly enlarges the solution space compared to the existing cuboidal corridors-based method. Finally, a piecewise Bezier curve optimization is conducted in our proposed corridors. This formulation theoretically guarantees the safety of the continuous-time trajectory. We validate the efficiency and effectiveness of the proposed approach in numerical and
CommonRoad simulations.

BibTeX

@conference{Deolasee-2023-139368,
author = {Srujan Deolasee and Qin Lin and Jialun Li and John M. Dolan},
title = {Spatio-temporal Motion Planning for Autonomous Vehicles with Trapezoidal Prism Corridors and Bézier Curves},
booktitle = {Proceedings of the American Control Conference (ACC)},
year = {2023},
month = {May},
pages = {3207-3214},
keywords = {autonomous vehicle, motion planning, trajectory optimization},
}