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An adaptive approach for the reconstruction and modeling of as-built 3D pipelines from point clouds

机译:从点云重建和建模3D管道的自适应方法

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摘要

Automated extraction of 3D geometric shapes such as planes, spheres, cylinders, cones, and tori in laser-scanned point clouds is a challenging problem and a tedious process, especially when using cluttered data. This paper describes a modification of the existing Hough transform for the automatic detection of cylinder parameters in point clouds. Careful analysis reveals that the existing Method still has excessive space and time complexity or yields imprecise outcomes. The approach described here modifies the orientation estimation With an area based adaptive method that utilizes a small accumulator to detect significant peaks in the Hough space in the presence of single or multiple cylinders in the point cloud data. After orientation estimation, the position and radius are estimated using an orthonormal coordinate system with a circle fitting algorithm. These modifications are tested with extensive sets of real point cloud data, and experimental results show that the presented approach minimizes the space and time complexity. After detection, the relationship between cylinders is reconstructed to form a continuous axis network by tracking cylinder parameters obtained from earlier steps. Using the axis network of cylinders obtained from point clouds, models of entire pipelines that include straight pipes, elbow joints, and T-junctions are determinately defined, and output data is reconstructed in Smart Plant 3D (SP3D). The presented results show that the proposed approach indeed improves the computational complexity by reducing the space and time, and yields methods that can be employed in the automation of 3D pipeline model reconstruction. (C) 2016 Elsevier B.V. All rights reserved.
机译:在激光扫描的点云中自动提取3D几何形状(例如平面,球体,圆柱体,圆锥体和圆托)是一个充满挑战的问题,而且是一个繁琐的过程,尤其是在使用混乱的数据时。本文描述了现有Hough变换的一种修改形式,用于自动检测点云中的圆柱体参数。仔细的分析表明,现有方法仍然存在过多的空间和时间复杂性,或者产生的结果不精确。此处描述的方法使用基于面积的自适应方法修改了方向估计,该方法利用小型累加器在点云数据中存在单个或多个圆柱时检测霍夫空间中的显着峰值。定向估计后,使用带有圆拟合算法的正交坐标系估计位置和半径。这些修改用大量的实际点云数据集进行了测试,实验结果表明,所提出的方法可以最大程度地减少空间和时间复杂度。检测后,通过跟踪从先前步骤获得的圆柱体参数,重建圆柱体之间的关系,以形成一个连续的轴网络。使用从点云获得的圆柱体的轴线网络,可以确定包括直管,弯头和T型接头的整个管道的模型,并在Smart Plant 3D(SP3D)中重建输出数据。给出的结果表明,所提出的方法确实通过减少空间和时间来提高了计算复杂度,并产生了可用于3D管道模型重构自动化的方法。 (C)2016 Elsevier B.V.保留所有权利。

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