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Segmentation of Planar Surfaces from Laser Scanning Data Using the Magnitude of Normal Position Vector for Adaptive Neighborhoods

机译:使用正常位置矢量的幅度从激光扫描数据分割平面以适应邻域

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Diverse approaches to laser point segmentation have been proposed since the emergence of the laser scanning system. Most of these segmentation techniques, however, suffer from limitations such as sensitivity to the choice of seed points, lack of consideration of the spatial relationships among points, and inefficient performance. In an effort to overcome these drawbacks, this paper proposes a segmentation methodology that: (1) reduces the dimensions of the attribute space; (2) considers the attribute similarity and the proximity of the laser point simultaneously; and (3) works well with both airborne and terrestrial laser scanning data. A neighborhood definition based on the shape of the surface increases the homogeneity of the laser point attributes. The magnitude of the normal position vector is used as an attribute for reducing the dimension of the accumulator array. The experimental results demonstrate, through both qualitative and quantitative evaluations, the outcomes’ high level of reliability. The proposed segmentation algorithm provided 96.89% overall correctness, 95.84% completeness, a 0.25 m overall mean value of centroid difference, and less than 1° of angle difference. The performance of the proposed approach was also verified with a large dataset and compared with other approaches. Additionally, the evaluation of the sensitivity of the thresholds was carried out. In summary, this paper proposes a robust and efficient segmentation methodology for abstraction of an enormous number of laser points into plane information.
机译:自从激光扫描系统出现以来,已经提出了多种方法来进行激光点分割。然而,这些分割技术中的大多数都受到局限性的限制,例如对种子点选择的敏感性,缺乏对点之间空间关系的考虑以及效率低下。为了克服这些缺点,本文提出了一种分割方法,该方法:(1)减小属性空间的维数; (2)同时考虑属性相似度和激光点的接近度; (3)对机载和地面激光扫描数据均能很好地工作。基于表面形状的邻域定义增加了激光点属性的均匀性。正常位置矢量的大小用作减小累加器阵列尺寸的属性。实验结果通过定性和定量评估证明了结果的高度可靠性。提出的分割算法可提供96.89%的整体正确性,95.84%的完整性,质心差的整体平均值为0.25 m,角度差小于1°。还通过大型数据集验证了所提出方法的性能,并与其他方法进行了比较。另外,还进行了阈值敏感性的评估。总而言之,本文提出了一种鲁棒而有效的分割方法,用于将大量激光点抽象为平面信息。

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