Adaptive Hybrid Local-Global Sampling for Fast Informed Sampling-Based Optimal Path Planning
Abstract
This paper improves the performance of RRT-like sampling-based path planners by combining admissible informed sampling and local sampling (i.e., sampling the neighborhood of the current solution). An adaptive strategy regulates the trade-off between exploration (admissible informed sampling) and exploitation (local sampling) based on online rewards from previous samples. The paper demonstrates that the algorithm is asymptotically optimal and has a better convergence rate than state-of-the-art path planners (e.g., Informed-RRT*) in several simulated and real-world scenarios. An open-source, ROS-compatible implementation of the algorithm is publicly available.
Cite
@article{arxiv.2208.09318,
title = {Adaptive Hybrid Local-Global Sampling for Fast Informed Sampling-Based Optimal Path Planning},
author = {Marco Faroni and Nicola Pedrocchi and Manuel Beschi},
journal= {arXiv preprint arXiv:2208.09318},
year = {2024}
}
Comments
Preprint of manuscript accepted for publication on Autonomous Robots, Springer Nature