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Assessment of Seismic Building Vulnerability from Space
Author(s) -
Geiß Christian,
Taubenböck Hannes,
Tyagunov Sergey,
Tisch Anita,
Post Joachim,
Lakes Tobia
Publication year - 2014
Publication title -
earthquake spectra
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.134
H-Index - 92
eISSN - 1944-8201
pISSN - 8755-2930
DOI - 10.1193/121812eqs350m
Subject(s) - vulnerability (computing) , cohen's kappa , vulnerability assessment , statistic , bayes' theorem , computer science , naive bayes classifier , support vector machine , remote sensing , data mining , machine learning , geography , artificial intelligence , bayesian probability , statistics , mathematics , computer security , psychology , psychological resilience , psychotherapist
This paper quantitatively evaluates the suitability of multi-sensor remote sensing to assess the seismic vulnerability of buildings for the example city of Padang, Indonesia. Features are derived from remote sensing data to characterize the urban environment and are subsequently combined with in situ observations. Machine learning approaches are deployed in a sequential way to identify meaningful sets of features that are suitable to predict seismic vulnerability levels of buildings. When assessing the vulnerability level according to a scoring method, the overall mean absolute percentage error is 10.6%, if using a supervised support vector regression approach. When predicting EMS-98 classes, the results show an overall accuracy of 65.4% and a kappa statistic of 0.36, if using a naive Bayes learning scheme. This study shows potential for a rapid screening assessment of large areas that should be explored further in the future.

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