Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment
Given high urbanization rates and increasing spatio-temporal variability in many present-day cities, exposure information is often out-of-date, highly aggregated or spatially fragmented, increasing the uncertainties associated with seismic risk assessments. This work therefore aims at using space-ba...
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Online Access: | http://www.mdpi.com/2220-9964/1/1/69 |
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doaj-6f90ef1a00ae42dea7e0775e265343e12020-11-25T01:59:23ZengMDPI AGISPRS International Journal of Geo-Information2220-99642012-05-0111698810.3390/ijgi1010069Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk AssessmentJochen ZschauStefano ParolaiMassimiliano PittoreMarc WielandGiven high urbanization rates and increasing spatio-temporal variability in many present-day cities, exposure information is often out-of-date, highly aggregated or spatially fragmented, increasing the uncertainties associated with seismic risk assessments. This work therefore aims at using space-based technologies to estimate, complement and extend exposure data at multiple scales, over large areas and at a comparatively low cost for the case of the city of Bishkek, Kyrgyzstan. At a neighborhood scale, an analysis of urban structures using medium-resolution optical satellite images is performed. Applying image classification and change-detection analysis to a time-series of Landsat images, the urban environment can be delineated into areas of relatively homogeneous urban structure types, which can provide a first estimate of an exposed building stock (e.g., approximate age of structures, composition and distribution of predominant building types). At a building-by-building scale, a more detailed analysis of the exposed building stock is carried out using a high-resolution Quickbird image. Furthermore, the multi-resolution datasets are combined with census data to disaggregate population statistics. The tools used within this study are being developed on a free- and open-source basis and aim at being transparent, usable and transferable.http://www.mdpi.com/2220-9964/1/1/69remote sensingdisaster/risk managementexposure estimationearthquakes |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jochen Zschau Stefano Parolai Massimiliano Pittore Marc Wieland |
spellingShingle |
Jochen Zschau Stefano Parolai Massimiliano Pittore Marc Wieland Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment ISPRS International Journal of Geo-Information remote sensing disaster/risk management exposure estimation earthquakes |
author_facet |
Jochen Zschau Stefano Parolai Massimiliano Pittore Marc Wieland |
author_sort |
Jochen Zschau |
title |
Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment |
title_short |
Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment |
title_full |
Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment |
title_fullStr |
Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment |
title_full_unstemmed |
Exposure Estimation from Multi-Resolution Optical Satellite Imagery for Seismic Risk Assessment |
title_sort |
exposure estimation from multi-resolution optical satellite imagery for seismic risk assessment |
publisher |
MDPI AG |
series |
ISPRS International Journal of Geo-Information |
issn |
2220-9964 |
publishDate |
2012-05-01 |
description |
Given high urbanization rates and increasing spatio-temporal variability in many present-day cities, exposure information is often out-of-date, highly aggregated or spatially fragmented, increasing the uncertainties associated with seismic risk assessments. This work therefore aims at using space-based technologies to estimate, complement and extend exposure data at multiple scales, over large areas and at a comparatively low cost for the case of the city of Bishkek, Kyrgyzstan. At a neighborhood scale, an analysis of urban structures using medium-resolution optical satellite images is performed. Applying image classification and change-detection analysis to a time-series of Landsat images, the urban environment can be delineated into areas of relatively homogeneous urban structure types, which can provide a first estimate of an exposed building stock (e.g., approximate age of structures, composition and distribution of predominant building types). At a building-by-building scale, a more detailed analysis of the exposed building stock is carried out using a high-resolution Quickbird image. Furthermore, the multi-resolution datasets are combined with census data to disaggregate population statistics. The tools used within this study are being developed on a free- and open-source basis and aim at being transparent, usable and transferable. |
topic |
remote sensing disaster/risk management exposure estimation earthquakes |
url |
http://www.mdpi.com/2220-9964/1/1/69 |
work_keys_str_mv |
AT jochenzschau exposureestimationfrommultiresolutionopticalsatelliteimageryforseismicriskassessment AT stefanoparolai exposureestimationfrommultiresolutionopticalsatelliteimageryforseismicriskassessment AT massimilianopittore exposureestimationfrommultiresolutionopticalsatelliteimageryforseismicriskassessment AT marcwieland exposureestimationfrommultiresolutionopticalsatelliteimageryforseismicriskassessment |
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1724964770693513216 |