ROJun 7, 2021

Multi-goal path planning using multiple random trees

arXiv:2106.03407v153 citations
Originality Incremental advance
AI Analysis

This work addresses path planning for robotics or autonomous systems where efficient multi-goal navigation is needed, representing an incremental improvement over existing methods.

The paper tackles the problem of multi-goal path planning in obstacle-filled environments by proposing a sampling-based planner called Space-Filling Forest (SFF*) to compute short collision-free paths between targets, which improves Traveling Salesman Problem solutions by reducing travel costs.

In this paper, we propose a novel sampling-based planner for multi-goal path planning among obstacles, where the objective is to visit predefined target locations while minimizing the travel costs. The order of visiting the targets is often achieved by solving the Traveling Salesman Problem (TSP) or its variants. TSP requires to define costs between the individual targets, which - in a map with obstacles - requires to compute mutual paths between the targets. These paths, found by path planning, are used both to define the costs (e.g., based on their length or time-to-traverse) and also they define paths that are later used in the final solution. To enable TSP finding a good-quality solution, it is necessary to find these target-to-target paths as short as possible. We propose a sampling-based planner called Space-Filling Forest (SFF*) that solves the part of finding collision-free paths. SFF* uses multiple trees (forest) constructed gradually and simultaneously from the targets and attempts to find connections with other trees to form the paths. Unlike Rapidly-exploring Random Tree (RRT), which uses the nearest-neighbor rule for selecting nodes for expansion, SFF* maintains an explicit list of nodes for expansion. Individual trees are grown in a RRT* manner, i.e., with rewiring the nodes to minimize their cost. Computational results show that SFF* provides shorter target-to-target paths than existing approaches, and consequently, the final TSP solutions also have a lower cost.

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