Abstract

Very high spatial resolution (VHR) satellite images possess several advantages in terms of describing the details of ground targets. Extracting built-up areas from VHR images has received increasing attention in practical applications, such as land use planning, urbanization monitoring, geographic information database update. In this study, a novel method is proposed for built-up area detection and delineation on VHR satellite images, using multi-resolution space-frequency analysis, spatial dependence modelling and cross-scale feature fusion. First, the image is decomposed by multi-resolution wavelet transformation, and then the high-frequency information at different levels is employed to represent the multi-scale texture and structural characteristics of built-up areas. Subsequently, the local Getis-Ord statistic is introduced to model the spatial patterns of built-up area textures and structures by measuring the spatial dependence among frequency responses at different spatial positions. Finally, the saliency map of built-up areas is produced using a cross-scale feature fusion algorithm, followed by adaptive threshold segmentation to obtain the detection results. The experiments on ZY-3 and Quickbird datasets demonstrate the effectiveness and superiority of the proposed method through comparisons with existing algorithms.

Highlights

  • Built-up areas are important parts of a city, especially in urban areas

  • Existing methods based on spectral information only for medium- and coarse-resolution images do not provide satisfying detection results when dealing with Very high spatial resolution (VHR) remote sensing images

  • We proposed to use the local Getis-Ord statistic to model the spatial dependence among saliency values at different pixel positions in the texture saliency map

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Summary

Introduction

Built-up areas are important parts of a city, especially in urban areas. Rapid socio-economic development and increased population aggregation result in the spatial change of built-up areas through expansion, redevelopment and so on. Due to the increasing availability of remote sensing data, detecting and mapping built-up areas using satellite images is a very economical and efficient method. Built-up/urban areas are usually detected using medium- and coarse-resolution images (TM/ETM+, MODIS and DMSP/OLS, etc.) for large-scale applications [8,9,10,11,12,13,14]. With the rapid development of imaging techniques, satellite sensors can provide images with a very high spatial resolution (up to submeter); built-up areas can be observed at a finer scale. Existing methods based on spectral information only for medium- and coarse-resolution images do not provide satisfying detection results when dealing with VHR remote sensing images

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