Abstraction-Guided Sampling for Motion Planning

Authors

  • Scott Kiesel University of New Hampshire
  • Ethan Burns University of New Hampshire
  • Wheeler Ruml University of New Hampshire

DOI:

https://doi.org/10.1609/socs.v3i1.18265

Keywords:

Abstraction, Sample-Based, Shortest Path

Abstract

Motion planning in continuous space is a fundamentalrobotics problem that has been approached from many per-spectives. Rapidly-exploring Random Trees (RRTs) usesampling to efficiently traverse the continuous and high-dimensional state space. Heuristic graph search methods uselower bounds on solution cost to focus effort on portions ofthe space that are likely to be traversed by low-cost solutions.In this work, we bring these two ideas together in a tech-nique called f -biasing: we use estimates of solution cost,computed as in heuristic search, to guide sparse sampling,as in RRTs. We see this new technique as strengthening theconnections between motion planning in robotics and combi-natorial search in artificial intelligence.

Downloads

Published

2021-08-20