Anytime Motion Planning on Large Dense Roadmaps with Expensive Edge Evaluations

11/10/2017
by   Shushman Choudhury, et al.
0

We propose an algorithmic framework for efficient anytime motion planning on large dense geometric roadmaps, in domains where collision checks and therefore edge evaluations are computationally expensive. A large dense roadmap (graph) can typically ensure the existence of high quality solutions for most motion-planning problems, but the size of the roadmap, particularly in high-dimensional spaces, makes existing search-based planning algorithms computationally expensive. We deal with the challenges of expensive search and collision checking in two ways. First, we frame the problem of anytime motion planning on roadmaps as searching for the shortest path over a sequence of subgraphs of the entire roadmap graph, generated by some densification strategy. This lets us achieve bounded sub-optimality with bounded worst-case planning effort. Second, for searching each subgraph, we develop an anytime planning algorithm which uses a belief model to compute the collision probability of unknown configurations and searches for paths that are Pareto-optimal in path length and collision probability. This algorithm is efficient with respect to collision checks as it searches for successively shorter paths. We theoretically analyze both our ideas and evaluate them individually on high-dimensional motion-planning problems. Finally, we apply both of these ideas together in our algorithmic framework for anytime motion planning, and show that it outperforms BIT* on high-dimensional hypercube problems.

READ FULL TEXT

page 4

page 7

page 10

page 11

page 18

research
02/27/2020

Posterior Sampling for Anytime Motion Planning on Graphs with Expensive-to-Evaluate Edges

Collision checking is a computational bottleneck in motion planning, req...
research
05/17/2023

Motion Planning (In)feasibility Detection using a Prior Roadmap via Path and Cut Search

Motion planning seeks a collision-free path in a configuration space (C-...
research
01/14/2010

A Little More, a Lot Better: Improving Path Quality by a Simple Path Merging Algorithm

Sampling-based motion planners are an effective means for generating col...
research
04/14/2020

Multi-Resolution A*

Heuristic search-based planning techniques are commonly used for motion ...
research
04/04/2022

T*ε – Bounded-Suboptimal Efficient Motion Planning for Minimum-Time Planar Curvature-Constrained Systems

We consider the problem of finding collision-free paths for curvature-co...
research
10/11/2021

AMRA*: Anytime Multi-Resolution Multi-Heuristic A*

Heuristic search-based motion planning algorithms typically discretise t...
research
02/12/2020

Fast Planning Over Roadmaps via Selective Densification

We propose the Selective Densification method for fast motion planning t...

Please sign up or login with your details

Forgot password? Click here to reset