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Classification of building infrastructure and automatic building footprint delineation using airborne laser swath mapping data.

机译:使用机载激光测绘测绘数据对建筑物基础设施进行分类并自动绘制建筑物占地面积。

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摘要

Three-dimensional (3D) models of urban infrastructure comprise critical data for planners working on problems in wireless communications, environmental monitoring, civil engineering, and urban planning, among other tasks. Photogrammetric methods have been the most common approach to date to extract building models. However, Airborne Laser Swath Mapping (ALSM) observations offer a competitive alternative because they overcome some of the ambiguities that arise when trying to extract 3D information from 2D images.;Regardless of the source data, the building extraction process requires segmentation and classification of the data and building identification. In this work, approaches for classifying ALSM data, separating building and tree points, and delineating ALSM footprints from the classified data are described. Digital aerial photographs are used in some cases to verify results, but the objective of this work is to develop methods that can work on ALSM data alone.;A robust approach for separating tree and building points in ALSM data is presented. The method is based on supervised learning of the classes (tree vs. building) in a high dimensional feature space that yields good class separability. Features used for classification are based on the generation of local mappings, from three-dimensional space to two-dimensional space, known as "spin images" for each ALSM point to be classified. The method discriminates ALSM returns in compact spaces and even where the classes are very close together or overlapping spatially. A modified algorithm of the Hough Transform is used to orient the spin images, and the spin image parameters are specified such that the mutual information between the spin image pixel values and class labels is maximized. This new approach to ALSM classification allows us to fully exploit the 3D point information in the ALSM data while still achieving good class separability, which has been a difficult trade-off in the past.;Supported by the spin image analysis for obtaining an initial classification, an automatic approach for delineating accurate building footprints is presented. The physical fact that laser pulses that happen to strike building edges can produce very different 1st and last return elevations has been long recognized. However, in older generation ALSM systems (50 kHz pulse rates) such points were too few and far between to delineate building footprints precisely. Furthermore, without the robust separation of nearby trees and vegetation from the buildings, simply extracting ALSM shots where the elevation of the first return was much higher than the elevation of the last return, was not a reliable means of identifying building footprints. However, with the advent of ALSM systems with pulse rates in excess of 100 kHz, and by using spin-imaged based segmentation, it is now possible to extract building edges from the point cloud. A refined classification resulting from incorporating "on-edge" information is developed for obtaining quadrangular footprints. The footprint fitting process involves line generalization, least squares-based clustering and dominant points finding for segmenting individual building edges. In addition, an algorithm for fitting complex footprints using the segmented edges and data inside footprints is also proposed.
机译:城市基础设施的三维(3D)模型包括重要数据,这些数据供规划人员研究无线通信,环境监控,土木工程和城市规划等问题。摄影测量法是迄今为止提取建筑模型的最常用方法。但是,机载激光测绘测绘(ALSM)观测值提供了一种有竞争力的选择,因为它们克服了尝试从2D图像中提取3D信息时出现的一些歧义。;无论源数据如何,建筑物的提取过程都需要对图像进行分割和分类。数据和建筑物标识。在这项工作中,描述了用于对ALSM数据进行分类,分离建筑物和树点以及从分类后的数据描绘ALSM足迹的方法。在某些情况下,使用数字航空照片来验证结果,但这项工作的目的是开发仅可用于ALSM数据的方法。;提出了一种在ALSM数据中分离树和建筑物点的可靠方法。该方法基于在高维特征空间中类(树与建筑物)的监督学习,可产生良好的类可分离性。用于分类的特征基于从三维空间到二维空间的局部映射的生成,对于每个要分类的ALSM点,称为“旋转图像”。该方法区分紧凑空间中的ALSM返回值,甚至在类非常紧密或空间重叠的情况下也是如此。使用霍夫变换的改进算法来定向旋转图像,并指定旋转图像参数,以使旋转图像像素值和类别标签之间的互信息最大化。这种新的ALSM分类方法使我们能够充分利用ALSM数据中的3D点信息,同时仍然实现良好的类可分离性,这在过去一直是一个折衷的选择。 ,提出了一种用于描绘准确的建筑占地面积的自动方法。人们早已认识到,碰到建筑物边缘的激光脉冲会产生非常不同的第一和最后返回高度的物理事实。但是,在较早的ALSM系统(脉冲频率<50 kHz)中,这些点太少且相隔太远,无法精确地描绘出建筑足迹。此外,如果不能将建筑物周围的树木和植被牢固地分开,仅提取ALSM镜头(第一个回程的高度比最后一个回程的高度要高得多)就不是识别建筑物占地面积的可靠方法。但是,随着脉冲速率超过100 kHz的ALSM系统的出现,以及通过使用基于自旋成像的分段,现在可以从点云中提取建筑物边缘。开发了一种通过合并“边缘”信息而得到的精细分类,以获取四边形足迹。足迹拟合过程涉及线归纳,基于最小二乘的聚类和用于分割各个建筑物边缘的优势点。另外,还提出了一种算法,该算法使用分段的边缘和足迹内部的数据来拟合复杂的足迹。

著录项

  • 作者

    Caceres, Jhon.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Engineering Civil.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 215 p.
  • 总页数 215
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:39:25

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