Toward precise dense 3D reconstruction of indoor hallway: a confidence-based panoramic LiDAR point cloud fusion approach

点云 激光雷达 融合 计算机科学 点(几何) 计算机视觉 传感器融合 云计算 人工智能 计算机图形学(图像) 遥感 地理 数学 几何学 操作系统 哲学 语言学
作者
Hongtai Cheng,Jiayi Han
出处
期刊:Industrial Robot-an International Journal [Emerald (MCB UP)]
标识
DOI:10.1108/ir-03-2024-0132
摘要

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.
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