Abstract

The estimation of the vertical components of built-up areas from free Digital Elevation Model (DEM) global data filtered by multi-scale convolutional, morphological and textural transforms are generalized at the spatial resolution of 250 meters using linear least-squares regression techniques. Six test cases were selected: Hong Kong, London, New York, San Francisco, Sao Paulo, and Toronto. Five global DEM and two DEM composites are evaluated in terms of 60 combinations of linear, morphological and textural filtering and different generalization techniques. Four generalized vertical components estimates of built-up areas are introduced: the Average Gross Building Height (AGBH), the Average Net Building Height (ANBH), the Standard Deviation of Gross Building Height (SGBH), and the Standard Deviation of Net Building Height (SNBH). The study shows that the best estimation of the net GVC of built-up areas given by the ANBH and SNBH, always contains a greater error than their corresponding gross GVC estimation given by the AGBH and SGBH, both in terms of mean and standard deviation. Among the sources evaluated in this study, the best DEM source for estimating the GVC of built-up areas with univariate linear regression techniques is a composite of the 1-arcsec Shuttle Radar Topography Mission (SRTM30) and the Advanced Land Observing Satellite (ALOS) World 3D–30 m (AW3D30) using the union operator (CMP_SRTM30-AW3D30_U). A multivariate linear model was developed using 16 satellite features extracted from the CMP_SRTM30-AW3D30_U enriched by other land cover sources, to estimate the gross GVC. A RMSE of 2.40 m and 3.25 m was obtained for the AGBH and the SGBH, respectively. A similar multivariate linear model was developed to estimate the net GVC. A RMSE of 6.63 m and 4.38 m was obtained for the ANBH and the SNBH, respectively. The main limiting factors on the use of the available global DEMs for estimating the GVC of built-up areas are two. First, the horizontal resolution of these sources (circa 30 and 90 meters) corresponds to a sampling size that is larger than the expected average horizontal size of built-up structures as detected from nadir-angle Earth Observation (EO) data, producing more reliable estimates for gross vertical components than for net vertical component of built-up areas. Second, post-production processing targeting Digital Terrain Model specifications may purposely filter out the information on the vertical component of built-up areas that are contained in the global DEMs. Under the limitations of the study presented here, these results show a potential for using global DEM sources in order to derive statistically generalized parameters describing the vertical characteristics of built-up areas, at the scale of 250x250 meters. However, estimates need to be evaluated in terms of the specific requirements of target applications such as spatial population modelling, urban morphology, climate studies and so on.

Highlights

  • 1.1 Scope of the studyThere is a world-wide established need and interest for information of built-up areas for various applications such as urban planning, urban climate studies, urban environment science investigation, city resilience and urban risk management [1]

  • The first part of this study aims at understanding the available global Digital Elevation Models (DEM) sources and select the best source to use as statistical summary, while the second part aims at analysing the estimates of Generalized Vertical Components (GVC) of the built-up areas and proposing a final solution integrating the DEM sources with additional land cover information

  • The different Generalized Satellite Features (GSF) extracted from the DEM data and other satellite data are evaluated in this study trough linear regression techniques, that are used to infer GVC of built-up areas from the GSFs used as independent variables

Read more

Summary

Introduction

1.1 Scope of the studyThere is a world-wide established need and interest for information of built-up areas for various applications such as urban planning, urban climate studies, urban environment science investigation, city resilience and urban risk management [1]. This study aims to assess the possibility to use these free DEMs for extracting information on the vertical component of built-up areas. The study sets a target spatial resolution of the extracted vertical information of sub-kilometric scale, allowing city neighbouring analysis [7,8,9,10,11]. The main use of this information would be to improve the open and free data available for systematic comparative studies of whole urban areas [12,13,14], global or regional urban sustainable development assessment [15], or spatial modelling exercises requiring the seamless coverage of the Earth’s surface as for instance the production of global population grid data by downscaling of census data [16]. It could be used to fill data gaps at the city or at regional level

Objectives
Methods
Results
Discussion
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.