Toward precise dense 3D reconstruction of indoor hallway: a confidence-based panoramic LiDAR point cloud fusion approach
Abstract
Purpose
Indoor hallways are the most common and indispensable part of people’s daily life, commercial and industrial activities. This paper aims to achieve high-precision and dense 3D reconstruction of the narrow and long indoor hallway and proposes a 3D, dense 3D reconstruction, indoor hallway, rotating LiDAR reconstruction system based on rotating LiDAR.
Design/methodology/approach
This paper develops an orthogonal biaxial rotating LiDAR sensing device for low texture and narrow structures in hallways, which can capture panoramic point clouds containing rich features. A discrete interval scanning method is proposed considering the characteristics of the indoor hallway environment and rotating LiDAR. Considering the error model of LiDAR, this paper proposes a confidence-based point cloud fusion method to improve reconstruction accuracy.
Findings
In two different indoor hallway environments, the 3D reconstruction system proposed in this paper can obtain high-precision and dense reconstruction models. Meanwhile, the confidence-based point cloud fusion algorithm has been proven to improve the accuracy of 3D reconstruction.
Originality/value
A 3D reconstruction system was designed to obtain a high-precision and dense indoor hallway environment model. A discrete interval scanning method suitable for rotating LiDAR and hallway environments was proposed. A confidence-based point cloud fusion algorithm was designed to improve the accuracy of LiDAR 3D reconstruction. The entire system showed satisfactory performance in experiments.
Keywords
Acknowledgements
Funding: This work was jointly supported by Fundamental Research Funds for the Central Universities (N2303008) and Natural Science Foundation-Joint Fund Project of Liaoning Province (2022-KF-13-07).
Citation
Cheng, H. and Han, J. (2024), "Toward precise dense 3D reconstruction of indoor hallway: a confidence-based panoramic LiDAR point cloud fusion approach", Industrial Robot, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/IR-03-2024-0132
Publisher
:Emerald Publishing Limited
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