Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data

Earthquake-induced rubble in urbanized areas must be mapped and characterized. Location, volume, weight and constituents are key information in order to support emergency activities and optimize rubble management. A procedure to work out the geometric characteristics of the rubble heaps has already...

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Main Authors: Maurizio Pollino, Sergio Cappucci, Ludovica Giordano, Domenico Iantosca, Luigi De Cecco, Danilo Bersan, Vittorio Rosato, Flavio Borfecchia
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/4/262
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spelling doaj-d1b550460c5a482baa903dc605177dde2020-11-25T02:39:03ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-04-01926226210.3390/ijgi9040262Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed DataMaurizio Pollino0Sergio Cappucci1Ludovica Giordano2Domenico Iantosca3Luigi De Cecco4Danilo Bersan5Vittorio Rosato6Flavio Borfecchia7ENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyENEA, Italian Agency for New Technologies, Energy and Sustainable Economic Development, Casaccia Research Centre, 000123 Rome, ItalyEarthquake-induced rubble in urbanized areas must be mapped and characterized. Location, volume, weight and constituents are key information in order to support emergency activities and optimize rubble management. A procedure to work out the geometric characteristics of the rubble heaps has already been reported in a previous work, whereas here an original methodology for retrieving the rubble’s constituents by means of active and passive remote sensing techniques, based on airborne (LiDAR and RGB aero-photogrammetric) and satellite (WorldView-3) Very High Resolution (VHR) sensors, is presented. Due to the high spectral heterogeneity of seismic rubble, Spectral Mixture Analysis, through the Sequential Maximum Angle Convex Cone algorithm, was adopted to derive the linear mixed model distribution of remotely sensed spectral responses of pure materials (endmembers). These endmembers were then mapped on the hyperspectral signatures of various materials acquired on site, testing different machine learning classifiers in order to assess their relative abundances. The best results were provided by the C-Support Vector Machine, which allowed us to work out the characterization of the main rubble constituents with an accuracy up to 88.8% for less mixed pixels and the Random Forest, which was the only one able to detect the likely presence of asbestos.https://www.mdpi.com/2220-9964/9/4/262seismic post-emergencydisaster managementenvironmental analysis LiDARremote sensingWorldView-3COPERNICUS
collection DOAJ
language English
format Article
sources DOAJ
author Maurizio Pollino
Sergio Cappucci
Ludovica Giordano
Domenico Iantosca
Luigi De Cecco
Danilo Bersan
Vittorio Rosato
Flavio Borfecchia
spellingShingle Maurizio Pollino
Sergio Cappucci
Ludovica Giordano
Domenico Iantosca
Luigi De Cecco
Danilo Bersan
Vittorio Rosato
Flavio Borfecchia
Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
ISPRS International Journal of Geo-Information
seismic post-emergency
disaster management
environmental analysis LiDAR
remote sensing
WorldView-3
COPERNICUS
author_facet Maurizio Pollino
Sergio Cappucci
Ludovica Giordano
Domenico Iantosca
Luigi De Cecco
Danilo Bersan
Vittorio Rosato
Flavio Borfecchia
author_sort Maurizio Pollino
title Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
title_short Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
title_full Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
title_fullStr Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
title_full_unstemmed Assessing Earthquake-Induced Urban Rubble by Means of Multiplatform Remotely Sensed Data
title_sort assessing earthquake-induced urban rubble by means of multiplatform remotely sensed data
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-04-01
description Earthquake-induced rubble in urbanized areas must be mapped and characterized. Location, volume, weight and constituents are key information in order to support emergency activities and optimize rubble management. A procedure to work out the geometric characteristics of the rubble heaps has already been reported in a previous work, whereas here an original methodology for retrieving the rubble’s constituents by means of active and passive remote sensing techniques, based on airborne (LiDAR and RGB aero-photogrammetric) and satellite (WorldView-3) Very High Resolution (VHR) sensors, is presented. Due to the high spectral heterogeneity of seismic rubble, Spectral Mixture Analysis, through the Sequential Maximum Angle Convex Cone algorithm, was adopted to derive the linear mixed model distribution of remotely sensed spectral responses of pure materials (endmembers). These endmembers were then mapped on the hyperspectral signatures of various materials acquired on site, testing different machine learning classifiers in order to assess their relative abundances. The best results were provided by the C-Support Vector Machine, which allowed us to work out the characterization of the main rubble constituents with an accuracy up to 88.8% for less mixed pixels and the Random Forest, which was the only one able to detect the likely presence of asbestos.
topic seismic post-emergency
disaster management
environmental analysis LiDAR
remote sensing
WorldView-3
COPERNICUS
url https://www.mdpi.com/2220-9964/9/4/262
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