Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery

Automated remote sensing methods have not gained widespread usage for damage assessment after hurricane events, especially for low-rise buildings, such as individual houses and small businesses. Hurricane wind, storm surge with waves, and inland flooding have unique damage signatures, further compli...

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Main Authors: Shasha Jiang, Carol J. Friedland
Format: Article
Language:English
Published: Taylor & Francis Group 2016-05-01
Series:Geomatics, Natural Hazards & Risk
Online Access:http://dx.doi.org/10.1080/19475705.2014.1003417
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spelling doaj-47b6ffa95ef2487180a1adb45e934e682020-11-25T01:24:51ZengTaylor & Francis GroupGeomatics, Natural Hazards & Risk1947-57051947-57132016-05-017393395210.1080/19475705.2014.10034171003417Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imageryShasha Jiang0Carol J. Friedland1Louisiana State UniversityLouisiana State UniversityAutomated remote sensing methods have not gained widespread usage for damage assessment after hurricane events, especially for low-rise buildings, such as individual houses and small businesses. Hurricane wind, storm surge with waves, and inland flooding have unique damage signatures, further complicating the development of robust automated assessment methodologies. As a step toward realizing automated damage assessment for multi-hazard hurricane events, this paper presents a mono-temporal image classification methodology that quickly and accurately differentiates urban debris from non-debris areas using post-event images. Three classification approaches are presented: spectral, textural, and combined spectral–textural. The methodology is demonstrated for Gulfport, Mississippi, using IKONOS panchromatic satellite and NOAA aerial colour imagery collected after 2005 Hurricane Katrina. The results show that multivariate texture information significantly improves debris class detection performance by decreasing the confusion between debris and other land cover types, and the extracted debris zone accurately captures debris distribution. Additionally, the extracted debris boundary is approximately equivalent regardless of imagery type, demonstrating the flexibility and robustness of the debris mapping methodology. While the test case presents results for hurricane hazards, the proposed methodology is generally developed and expected to be effective in delineating debris zones for other natural hazards, including tsunamis, tornadoes, and earthquakes.http://dx.doi.org/10.1080/19475705.2014.1003417
collection DOAJ
language English
format Article
sources DOAJ
author Shasha Jiang
Carol J. Friedland
spellingShingle Shasha Jiang
Carol J. Friedland
Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
Geomatics, Natural Hazards & Risk
author_facet Shasha Jiang
Carol J. Friedland
author_sort Shasha Jiang
title Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
title_short Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
title_full Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
title_fullStr Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
title_full_unstemmed Automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
title_sort automatic urban debris zone extraction from post-hurricane very high-resolution satellite and aerial imagery
publisher Taylor & Francis Group
series Geomatics, Natural Hazards & Risk
issn 1947-5705
1947-5713
publishDate 2016-05-01
description Automated remote sensing methods have not gained widespread usage for damage assessment after hurricane events, especially for low-rise buildings, such as individual houses and small businesses. Hurricane wind, storm surge with waves, and inland flooding have unique damage signatures, further complicating the development of robust automated assessment methodologies. As a step toward realizing automated damage assessment for multi-hazard hurricane events, this paper presents a mono-temporal image classification methodology that quickly and accurately differentiates urban debris from non-debris areas using post-event images. Three classification approaches are presented: spectral, textural, and combined spectral–textural. The methodology is demonstrated for Gulfport, Mississippi, using IKONOS panchromatic satellite and NOAA aerial colour imagery collected after 2005 Hurricane Katrina. The results show that multivariate texture information significantly improves debris class detection performance by decreasing the confusion between debris and other land cover types, and the extracted debris zone accurately captures debris distribution. Additionally, the extracted debris boundary is approximately equivalent regardless of imagery type, demonstrating the flexibility and robustness of the debris mapping methodology. While the test case presents results for hurricane hazards, the proposed methodology is generally developed and expected to be effective in delineating debris zones for other natural hazards, including tsunamis, tornadoes, and earthquakes.
url http://dx.doi.org/10.1080/19475705.2014.1003417
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AT caroljfriedland automaticurbandebriszoneextractionfromposthurricaneveryhighresolutionsatelliteandaerialimagery
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