Earthquake building damage detection based on synthetic-aperture-radar imagery and machine learning

Author:

Rao Anirudh,Jung JungkyoORCID,Silva Vitor,Molinario Giuseppe,Yun Sang-HoORCID

Abstract

Abstract. This article presents a framework for semi-automated building damage assessment due to earthquakes from remote-sensing data and other supplementary datasets, while also leveraging recent advances in machine-learning algorithms. The framework integrates high-resolution building inventory data with earthquake ground shaking intensity maps and surface-level changes detected by comparing pre- and post-event InSAR (interferometric synthetic aperture radar) images. We demonstrate the use of ensemble models in a machine-learning approach to classify the damage state of buildings in the area affected by an earthquake. Both multi-class and binary damage classification are attempted for four recent earthquakes, and we compare the predicted damage labels with ground truth damage grade labels reported in field surveys. For three out of the four earthquakes studied, the model is able to identify over 50 % or nearly half of the damaged buildings successfully when using binary classification. Multi-class damage grade classification using InSAR data has rarely been attempted previously, and the case studies presented in this report represent one of the first such attempts using InSAR data.

Funder

World Bank Group

Earth Observatory of Singapore

Publisher

Copernicus GmbH

Subject

General Earth and Planetary Sciences

Reference73 articles.

1. Advanced Rapid Imaging and Analysis (ARIA): ARIA Damage Proxy Map for the 2015 Gorkha earthquake, Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology [data set], https://aria-share.jpl.nasa.gov/20150425-Nepal_EQ/DPM/, last access: 15 February 2023a. a

2. Advanced Rapid Imaging and Analysis (ARIA): ARIA Damage Proxy Map for the 2017 Puebla earthquake, Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology [data set], https://aria-share.jpl.nasa.gov/20170919-M7.1_Raboso_Mexico_EQ/DPM/, last access: 15 February 2023b. a

3. Advanced Rapid Imaging and Analysis (ARIA): ARIA Damage Proxy Map for the 2020 Puerto Rico earthquake, Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology [data set], https://aria-share.jpl.nasa.gov/20200106-Puerto_Rico_EQ/DPM/, last access: 15 February 2023c. a

4. Advanced Rapid Imaging and Analysis (ARIA): ARIA Damage Proxy Map for the 2020 Zagreb earthquake, Advanced Rapid Imaging and Analysis (ARIA) team at NASA's Jet Propulsion Laboratory and California Institute of Technology [data set], https://aria-share.jpl.nasa.gov/20200322_Zagreb_EQ/DPM/, last access: 15 February 2023d. a

5. Bai, Y., Adriano, B., Mas, E., and Koshimura, S.: Machine learning based building damage mapping from the ALOS-2/PALSAR-2 SAR imagery: Case study of 2016 Kumamoto earthquake, Journal of Disaster Research, 12, 646–655, https://doi.org/10.20965/jdr.2017.p0646, 2017. a, b, c

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