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Main Authors: Long, Shijun, Li, Ying, Wu, Chenming, Xu, Bin, Fan, Wei
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.10660
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author Long, Shijun
Li, Ying
Wu, Chenming
Xu, Bin
Fan, Wei
author_facet Long, Shijun
Li, Ying
Wu, Chenming
Xu, Bin
Fan, Wei
contents Rapid sampling from the environment to acquire available frontier points and timely incorporating them into subsequent planning to reduce fragmented regions are critical to improve the efficiency of autonomous exploration. We propose HPHS, a fast and effective method for the autonomous exploration of unknown environments. In this work, we efficiently sample frontier points directly from the LiDAR data and the local map around the robot, while exploiting a hierarchical planning strategy to provide the robot with a global perspective. The hierarchical planning framework divides the updated environment into multiple subregions and arranges the order of access to them by considering the overall revenue of the global path. The combination of the hybrid frontier sampling method and hierarchical planning strategy reduces the complexity of the planning problem and mitigates the issue of region remnants during the exploration process. Detailed simulation and real-world experiments demonstrate the effectiveness and efficiency of our approach in various aspects. The source code will be released to benefit the further research.
format Preprint
id arxiv_https___arxiv_org_abs_2407_10660
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HPHS: Hierarchical Planning based on Hybrid Frontier Sampling for Unknown Environments Exploration
Long, Shijun
Li, Ying
Wu, Chenming
Xu, Bin
Fan, Wei
Robotics
Rapid sampling from the environment to acquire available frontier points and timely incorporating them into subsequent planning to reduce fragmented regions are critical to improve the efficiency of autonomous exploration. We propose HPHS, a fast and effective method for the autonomous exploration of unknown environments. In this work, we efficiently sample frontier points directly from the LiDAR data and the local map around the robot, while exploiting a hierarchical planning strategy to provide the robot with a global perspective. The hierarchical planning framework divides the updated environment into multiple subregions and arranges the order of access to them by considering the overall revenue of the global path. The combination of the hybrid frontier sampling method and hierarchical planning strategy reduces the complexity of the planning problem and mitigates the issue of region remnants during the exploration process. Detailed simulation and real-world experiments demonstrate the effectiveness and efficiency of our approach in various aspects. The source code will be released to benefit the further research.
title HPHS: Hierarchical Planning based on Hybrid Frontier Sampling for Unknown Environments Exploration
topic Robotics
url https://arxiv.org/abs/2407.10660