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Hierarchical Path-Planning for Mobile Robots Using a Skeletonization-Informed Rapidly Exploring Random Tree*

Hyejeong Ryu

2020Applied Sciences11 citationsDOIOpen Access PDF

Abstract

An efficient, hierarchical, two-dimensional (2D) path-planning method for large complex environments is presented in this paper. For mobile robots moving in 2D environments, conventional path-planning algorithms employ single-layered maps; the proposed approach engages in hierarchical inter- and intra-regional searches. A navigable graph of an environment is constructed using segmented local grid maps and safe junction nodes. An inter-regional path is obtained using the navigable graph and a graph-search algorithm. A skeletonization-informed rapidly exploring random tree* (SIRRT*) efficiently computes converged intra-regional paths for each map segment. The sampling process of the proposed hierarchical path-planning algorithm is locally conducted only in the start and goal regions, whereas the conventional path-planning should process the sampling over the entire environment. The entire path from the start position to the goal position can be achieved more quickly and more robustly using the hierarchical approach than the conventional single-layered method. The performance of the hierarchical path-planning is analyzed using a publicly available benchmark environment.

Topics & Concepts

SkeletonizationMotion planningAny-angle path planningComputer scienceRandom treePath (computing)GraphGridBenchmark (surveying)Mobile robotArtificial intelligenceTree (set theory)Data miningRobotTheoretical computer scienceMathematicsGeographyCartographyMathematical analysisGeometryProgramming languageRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationRobotic Locomotion and Control