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An adaptive approach for the segmentation and extraction of planar and linear/cylindrical features from laser scanning data

机译:从激光扫描数据中分割和提取平面和线性/圆柱特征的自适应方法

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摘要

Laser scanning systems have been established as leading tools for the collection of high density three-dimensional data over physical surfaces. The collected point cloud does not provide semantic information about the characteristics of the scanned surfaces. Therefore, different processing techniques have been developed for the extraction of useful information from this data which could be applied for diverse civil, industrial, and military applications. Planar and linear/cylindrical features are among the most important primitive information to be extracted from laser scanning data, especially those collected in urban areas. This paper introduces a new approach for the identification, parameterization, and segmentation of these features from laser scanning data while considering the internal characteristics of the utilized point cloud-i.e., local point density variation and noise level in the dataset. In the first step of this approach, a Principal Component Analysis of the local neighborhood of individual points is implemented to identify the points that belong to planar and linear/cylindrical features and select their appropriate representation model. For the detected planar features, the segmentation attributes are then computed through an adaptive cylinder neighborhood definition. Two clustering approaches are then introduced to segment and extract individual planar features in the reconstructed parameter domain. For the linear/cylindrical features, their directional and positional parameters are utilized as the segmentation attributes. A sequential clustering technique is proposed to isolate the points which belong to individual linear/cylindrical features through directional and positional attribute subspaces. Experimental results from simulated and real datasets demonstrate the feasibility of the proposed approach for the extraction of planar and linear/cylindrical features from laser scanning data.
机译:激光扫描系统已被确立为在物理表面上收集高密度三维数据的领先工具。收集的点云不提供有关扫描表面特征的语义信息。因此,已经开发了不同的处理技术来从该数据中提取有用的信息,这些信息可以应用于各种民用,工业和军事应用。平面特征和线性/圆柱特征是最重要的原始信息之一,可以从激光扫描数据中提取出来,尤其是在城市地区收集的原始信息。本文介绍了一种从激光扫描数据中识别,参数化和分割这些特征的新方法,同时考虑了所利用点云的内部特征,即数据集中的局部点密度变化和噪声水平。在此方法的第一步中,对单个点的局部邻域进行主成分分析,以识别属于平面和线性/圆柱特征的点,并选择其适当的表示模型。对于检测到的平面特征,然后通过自适应圆柱邻域定义来计算分割属性。然后引入两种聚类方法,以在重构的参数域中分割和提取单个平面特征。对于线性/圆柱特征,将其方向和位置参数用作分割属性。提出了一种顺序聚类技术,通过方向和位置属性子空间隔离属于单个线性/圆柱特征的点。来自模拟和真实数据集的实验结果证明了该方法从激光扫描数据中提取平面和线性/圆柱特征的可行性。

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