Literature DB >> 34209169

Earthquake-Induced Building-Damage Mapping Using Explainable AI (XAI).

Sahar S Matin1, Biswajeet Pradhan1,2,3,4.   

Abstract

Building-damage mapping using remote sensing images plays a critical role in providing quick and accurate information for the first responders after major earthquakes. In recent years, there has been an increasing interest in generating post-earthquake building-damage maps automatically using different artificial intelligence (AI)-based frameworks. These frameworks in this domain are promising, yet not reliable for several reasons, including but not limited to the site-specific design of the methods, the lack of transparency in the AI-model, the lack of quality in the labelled image, and the use of irrelevant descriptor features in building the AI-model. Using explainable AI (XAI) can lead us to gain insight into identifying these limitations and therefore, to modify the training dataset and the model accordingly. This paper proposes the use of SHAP (Shapley additive explanation) to interpret the outputs of a multilayer perceptron (MLP)-a machine learning model-and analyse the impact of each feature descriptor included in the model for building-damage assessment to examine the reliability of the model. In this study, a post-event satellite image from the 2018 Palu earthquake was used. The results show that MLP can classify the collapsed and non-collapsed buildings with an overall accuracy of 84% after removing the redundant features. Further, spectral features are found to be more important than texture features in distinguishing the collapsed and non-collapsed buildings. Finally, we argue that constructing an explainable model would help to understand the model's decision to classify the buildings as collapsed and non-collapsed and open avenues to build a transferable AI model.

Entities:  

Keywords:  building-damage mapping; explainable AI; feature analysis; machine learning; remote sensing

Mesh:

Year:  2021        PMID: 34209169      PMCID: PMC8271973          DOI: 10.3390/s21134489

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


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Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2013-08       Impact factor: 6.226

2.  Extreme Learning Machine for Multilayer Perceptron.

Authors:  Jiexiong Tang; Chenwei Deng; Guang-Bin Huang
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2015-05-07       Impact factor: 10.451

3.  Earthquake hazard and risk assessment using machine learning approaches at Palu, Indonesia.

Authors:  Ratiranjan Jena; Biswajeet Pradhan; Ghassan Beydoun; Abdullah M Alamri; Hizir Sofyan
Journal:  Sci Total Environ       Date:  2020-08-11       Impact factor: 7.963

4.  An Artificial Intelligence Application for Post-Earthquake Damage Mapping in Palu, Central Sulawesi, Indonesia.

Authors:  Mutiara Syifa; Prima Riza Kadavi; Chang-Wook Lee
Journal:  Sensors (Basel)       Date:  2019-01-28       Impact factor: 3.576

5.  An AUC-based permutation variable importance measure for random forests.

Authors:  Silke Janitza; Carolin Strobl; Anne-Laure Boulesteix
Journal:  BMC Bioinformatics       Date:  2013-04-05       Impact factor: 3.169

  5 in total
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2.  Improve the Deep Learning Models in Forestry Based on Explanations and Expertise.

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Journal:  Front Plant Sci       Date:  2022-05-19       Impact factor: 6.627

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