Abstract

Road information is fundamental not only in the military field but also common daily living. Automatic road extraction from a remote sensing images can provide references for city planning as well as transportation database and map updating. However, owing to the spectral similarity between roads and impervious structures, the current methods solely using spectral characteristics are often ineffective. By contrast, the detailed information discernible from the high-resolution aerial images enables road extraction with spatial texture features. In this study, a knowledge-based method is established and proposed; this method incorporates the spatial texture feature into urban road extraction. The spatial texture feature is initially extracted by the local Moran’s I, and the derived texture is added to the spectral bands of image for image segmentation. Subsequently, features like brightness, standard deviation, rectangularity, aspect ratio, and area are selected to form the hypothesis and verification model based on road knowledge. Finally, roads are extracted by applying the hypothesis and verification model and are post-processed based on the mathematical morphology. The newly proposed method is evaluated by conducting two experiments. Results show that the completeness, correctness, and quality of the results could reach approximately 94%, 90% and 86% respectively, indicating that the proposed method is effective for urban road extraction.

Highlights

  • As a key component of the transportation systems, roads belong to the infrastructure of modernization

  • With the development of the remote sensing technology, automatic road extraction from remote sensing images has become an important subject in digital photogrammetry [1]

  • Li et al [10] reviewed some applications of semi-automatic road extraction methods

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Summary

Introduction

As a key component of the transportation systems, roads belong to the infrastructure of modernization. They are significant in both the military field and common daily living. Li et al [10] reviewed some applications of semi-automatic road extraction methods. Trinder et al [1] proposed a knowledge-based method for road extraction from aerial. Trinder et al [1] proposed a knowledge-based method for road extraction from aerial images; in their method, the radiometric and geometric properties of roads and the relationship iammaognegs;thine rthoaedirsmineitmhoadg,esthoef rdaidffieormenettriecsoalnudtiognesomareturiscedprtoopeexrtrieasctorforaodasd. Too oovveerrccoomme tthhe aaffoorreementioned problem and improve the accuracy of road extraction, a new method is proposed in this study to eextract uurrbbaann rrooaaddss ffrroommhhiigghh--rreessoolluuttiioonn rreemmoottee sseennssiinnggiimmaaggeess. The proposed road extraction method is based on object-based methods [15], in which the spatial texture featuree is extractedd by using the local spatial statistics, and the derived texture is added to the spectral bands for road exttraccttiioonn

MMeetthhooddoollooggyy
Texture Information Extraction
Road Extraction
Post-Processing
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