Abstract

Abstract. Within-class spectral variation and between-class spectral confusion in remotely sensed imagery degrades the performance of built-up area detection when using planar texture, shape, and spectral features. Terrain slope and building height are often used to optimize the results, but extracted from auxiliary data (e.g. LIDAR data, DSM). Moreover, the auxiliary data must be acquired around the same time as image acquisition. Otherwise, built-up area detection accuracy is affected. Stereo imagery incorporates both planar and height information unlike single remotely sensed images. Stereo imagery acquired by many satellites (e.g. Worldview-4, Pleiades-HR, ALOS-PRISM, and ZY-3) can be used as data source of identifying built-up areas. A new method of identifying high-accuracy built-up areas from stereo imagery is achieved by using a combination of planar and height features. The digital surface model (DSM) and digital orthophoto map (DOM) are first generated from stereo images. Then, height values of above-ground objects (e.g. buildings) are calculated from the DSM, and used to obtain raw built-up areas. Other raw built-up areas are obtained from the DOM using Pantex and Gabor, respectively. Final high-accuracy built-up area results are achieved from these raw built-up areas using the decision level fusion. Experimental results show that accurate built-up areas can be achieved from stereo imagery. The height information used in the proposed method is derived from stereo imagery itself, with no need to require auxiliary height data (e.g. LIDAR data). The proposed method is suitable for spaceborne and airborne stereo pairs and triplets.

Highlights

  • Identifying built-up areas is an essential task for government agencies facing the complex and ever changing demands of city planning

  • A new method of identifying high-accuracy built-up areas from stereo imagery is achieved by using a combination of planar and height features in the decision level fusion

  • These planar and height features are respectively extracted from the digital surface model (DSM) and digital orthophoto map (DOM) generated from stereo images

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Summary

Introduction

Identifying built-up areas is an essential task for government agencies facing the complex and ever changing demands of city planning. Builtup areas have been identified from remotely sensed imagery, such as low- and moderate-resolution multispectral imagery, and high-resolution panchromatic imagery. Compared with low- and moderate-resolution spaceborne imagery, highresolution spaceborne imagery contains more detailed information for obtaining more granular and precise urban area identification results. In high-resolution spaceborne imagery, within-class spectral variation and between-class spectral confusion degrades the separability of various land use types (Yan et al, 2015). Built-up and not-built-up areas contain different land use types, and the separability between them is reduced. Built-up areas comprised of large buildings with flat, single color roofs are likely to be identified as open space and misclassified as not-built-up areas

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