Abstract

Abstract. The objective of this study is the automatic extraction of the road network in a scene of the urban area from high resolution aerial image data. Our approach includes two stages aiming to solve two important issues respectively, i.e., an effective road extraction pipeline, and a precise vectorized road map. In the first stage, we proposed a so-called all element road model which describes a multiple-level structure of the basic road elements, i.e. intersection, central line, side lines, and road plane based on their spatial relations. An advanced road network extraction scheme was proposed to address the issues of tedious steps on segmentation, recognition and grouping, using the digital surface model (DSM) only. The key feature of the proposed approach was the cross validation of the road basic elements, which was applied all the way through the entire procedure of road extraction. In the second stage, the regularized road map was produced where center line and side lines subject to parallel and even layout rules. It gives more accurate and reliable map by utilizing both the height information of the DSM and the color information of the ortho image. Road surface was extracted from the image by region growing. Then, a regularized center line was modeled by linear regression using all the pixels of the road surface. The road width was estimated and two road side lines were modeled as the straight lines parallel with the center line. Finally, the road model was built up in terms of vectorized points and lines. The experimental results showed that the proposed approach performed satisfactorily in our test site.

Highlights

  • Automated creation and update of road maps from high resolution remote sensing data is one of the most important and challenging researches in the field of photogrammetry and remote sensing

  • Various automated methodologies have been developed in order to obtain more accurate road maps, quite a lot of challenges still remain due to the complexity of the environments in dense urban areas

  • Given that there are so much good road extraction methods like what we introduced above, we would still like present this study that is novel on a complex vector road model as well as the according extraction and vectorizing method

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Summary

Introduction

Automated creation and update of road maps from high resolution remote sensing data is one of the most important and challenging researches in the field of photogrammetry and remote sensing. For road extraction using remote sensing images, the methods used and the information that can be extracted vary greatly depending on the resolution of the images. High-resolution aerial photographs and satellite images show the road in more detail and clarity. When using such image data, it is necessary to extract the road as an area with a width (Lu et al, 2009; Ravanbakhsh et al, 2008)

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