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Automated road network extraction from high spatial resolution multi-spectral imagery.

机译:从高空间分辨率多光谱图像中自动提取路网。

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摘要

For the last three decades, the Geomatics Engineering and Computer Science communities have considered automated road network extraction from remotely-sensed imagery to be a challenging and important research topic. The main objective of this research is to investigate the theory and methodology of automated feature extraction for image-based road database creation, refinement or updating, and to develop a series of algorithms for road network extraction from high resolution multi-spectral imagery.;An iterative and localized Radon transform is developed for the extraction of road centerlines from the classified images. The purpose of the transform is to accurately and completely detect the road centerlines. It is able to find short, long, and even curvilinear lines. The input image is partitioned into a set of subset images called road component images. An iterative Radon transform is locally applied to each road component image. At each iteration, road centerline segments are detected based on an accurate estimation of the line parameters and line widths. Three localization approaches are implemented and compared using qualitative and quantitative methods. Finally, the road centerline segments are grouped into a road network. The extracted road network is evaluated against a reference dataset using a line segment matching algorithm. The entire process is unsupervised and fully automated.;Based on extensive experimentation on a variety of remotely-sensed multi-spectral images, the proposed methodology achieves a moderate success in automating road network extraction from high spatial resolution multi-spectral imagery.;The proposed framework for road network extraction from multi-spectral imagery begins with an image segmentation using the k-means algorithm. This step mainly concerns the exploitation of the spectral information for feature extraction. The road cluster is automatically identified using a fuzzy classifier based on a set of predefined road surface membership functions. These membership functions are established based on the general spectral signature of road pavement materials and the corresponding normalized digital numbers on each multi-spectral band. Shape descriptors of the Angular Texture Signature are defined and used to reduce the misclassifications between roads and other spectrally similar objects (e.g., crop fields, parking lots, and buildings).
机译:在过去的三十年中,地理工程和计算机科学界一直认为,从遥感影像中自动提取道路网络是一项具有挑战性且重要的研究课题。这项研究的主要目的是研究基于图像的道路数据库的创建,优化或更新的自动特征提取的理论和方法,并开发一系列从高分辨率多光谱图像中提取道路网络的算法。开发了迭代和局部Radon变换,用于从分类图像中提取道路中心线。转换的目的是准确,完整地检测道路中心线。它能够找到短,长甚至曲线的线。输入图像被划分为一组称为道路分量图像的子集图像。迭代Radon变换局部应用于每个道路分量图像。在每次迭代时,都会基于线参数和线宽的准确估算来检测道路中心线段。使用定性和定量方法实施和比较了三种定位方法。最后,将道路中心线段分组为道路网络。使用线段匹配算法针对参考数据集评估提取的道路网络。整个过程是不受监督的,并且是完全自动化的。;基于对各种遥感多光谱图像的广泛实验,所提出的方法在自动化从高空间分辨率多光谱图像中提取道路网络方面取得了一定的成功。从多光谱图像提取道路网络的框架始于使用k-means算法的图像分割。该步骤主要涉及利用频谱信息进行特征提取。基于一组预定义的路面隶属度函数,使用模糊分类器自动识别道路集群。这些隶属函数是基于路面材料的一般光谱特征以及每个多光谱带上的相应归一化数字编号而建立的。定义了Angular Texture Signature的形状描述符,并用于减少道路和其他光谱相似的对象(例如农田,停车场和建筑物)之间的错误分类。

著录项

  • 作者

    Zhang, Qiaoping.;

  • 作者单位

    University of Calgary (Canada).;

  • 授予单位 University of Calgary (Canada).;
  • 学科 Engineering General.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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