变形点云的超体素无目标配准与稳定区识别

IF 1.2 Q4 REMOTE SENSING
Yihui Yang, V. Schwieger
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引用次数: 1

摘要

精确、鲁棒的三维点云配准是基于地面激光扫描(TLS)的变形监测处理链的关键环节,近二十年来得到了广泛的研究。然而,对于没有信号目标的场景,自动和鲁棒的点云配准变得更具挑战性,特别是当扫描序列之间存在明显的变形和变化时,这可能导致错误的配准。本文提出了一种不需要人工目标或提取特征点的局部不稳定点云的全自动配准算法。该方法首先基于变形物体的局部一致性假设,对粗配准点云进行过分割,并用超体素表示。考虑基于随机模型近似假设的置信区间来确定局部最小可探测变形,以识别稳定区域。通过有效的迭代过程,可以逐步检测两次扫描之间明显变形的超体素,仅保留用于精细配准的稳定区域。本文在两个数据集(均采用双历元扫描)上验证了所提出的配准方法:模拟具有不同类型变化(包括刚体运动和形状变形)的室内场景,以及奥地利Obergurgl附近的Nesslrinna滑坡。实验结果表明,与现有的基于体素的方法和迭代最近点(ICP)算法的变体相比,该算法具有更高的配准精度,从而可以更好地检测TLS点云中的变形。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervoxel-based targetless registration and identification of stable areas for deformed point clouds
Abstract Accurate and robust 3D point cloud registration is the crucial part of the processing chain in terrestrial laser scanning (TLS)-based deformation monitoring that has been widely investigated in the last two decades. For the scenarios without signalized targets, however, automatic and robust point cloud registration becomes more challenging, especially when significant deformations and changes exist between the sequence of scans which may cause erroneous registrations. In this contribution, a fully automatic registration algorithm for point clouds with partially unstable areas is proposed, which does not require artificial targets or extracted feature points. In this method, coarsely registered point clouds are firstly over-segmented and represented by supervoxels based on the local consistency assumption of deformed objects. A confidence interval based on an approximate assumption of the stochastic model is considered to determine the local minimum detectable deformation for the identification of stable areas. The significantly deformed supervoxels between two scans can be detected progressively by an efficient iterative process, solely retaining the stable areas to be utilized for the fine registration. The proposed registration method is demonstrated on two datasets (both with two-epoch scans): An indoor scene simulated with different kinds of changes, including rigid body movement and shape deformation, and the Nesslrinna landslide close to Obergurgl, Austria. The experimental results show that the proposed algorithm exhibits a higher registration accuracy and thus a better detection of deformations in TLS point clouds compared with the existing voxel-based method and the variants of the iterative closest point (ICP) algorithm.
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来源期刊
Journal of Applied Geodesy
Journal of Applied Geodesy REMOTE SENSING-
CiteScore
2.30
自引率
7.10%
发文量
30
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