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Global Mapping of Exposure and Physical Vulnerability Dynamics in Least Developed Countries using Remote Sensing and Machine Learning

Published 2 Apr 2024 in cs.LG and cs.CV | (2404.01748v1)

Abstract: As the world marked the midterm of the Sendai Framework for Disaster Risk Reduction 2015-2030, many countries are still struggling to monitor their climate and disaster risk because of the expensive large-scale survey of the distribution of exposure and physical vulnerability and, hence, are not on track in reducing risks amidst the intensifying effects of climate change. We present an ongoing effort in mapping this vital information using machine learning and time-series remote sensing from publicly available Sentinel-1 SAR GRD and Sentinel-2 Harmonized MSI. We introduce the development of "OpenSendaiBench" consisting of 47 countries wherein most are least developed (LDCs), trained ResNet-50 deep learning models, and demonstrated the region of Dhaka, Bangladesh by mapping the distribution of its informal constructions. As a pioneering effort in auditing global disaster risk over time, this paper aims to advance the area of large-scale risk quantification in informing our collective long-term efforts in reducing climate and disaster risk.

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References (23)
  1. Copernicus Sentinel data. Sentinel-1 SAR GRD: C-band Synthetic Aperture Radar Ground Range Detected, log scaling. https://developers.google.com/earth-engine/datasets/catalog/COPERNICUS_S1_GRD, 2024a. Accessed: 2024-02-01.
  2. Copernicus Sentinel data. Harmonized Sentinel-2 MSI: MultiSpectral Instrument, Level-2A. https://developers.google.com/earth-engine/datasets/catalog/COPERNICUS_S2_SR_HARMONIZED, 2024b. Accessed: 2024-02-01.
  3. Copernicus Sentinel data. Sentinel-2: Cloud Probability. https://developers.google.com/earth-engine/datasets/catalog/COPERNICUS_S2_CLOUD_PROBABILITY, 2024c. Accessed: 2024-02-01.
  4. OpenSendaiBench: A Benchmark Dataset of Building Exposure and Vulnerability Dynamics for EO-based Auditing of Global Disaster Risk, 2024. URL https://doi.org/10.5281/zenodo.10840484.
  5. World settlement footprint 3d-a first three-dimensional survey of the global building stock. Remote Sensing of Environment, 270:112877, 2022.
  6. National-scale mapping of building height using sentinel-1 and sentinel-2 time series. Remote Sensing of Environment, 252:112128, 2021.
  7. The GED4GEM project: Development of a global exposure database for the global earthquake model initiative. Proceedings of the 15th WCEE, Lisbon, 2012.
  8. Benefits of global earth observation missions for disaggregation of exposure data and earthquake loss modeling: evidence from santiago de chile. Natural Hazards, 119(2):779–804, 2023.
  9. Google earth engine: Planetary-scale geospatial analysis for everyone. Remote Sensing of Environment, 2017. doi: 10.1016/j.rse.2017.06.031. URL https://doi.org/10.1016/j.rse.2017.06.031.
  10. Developing an adaptive global exposure model to support the generation of country disaster risk profiles. Earth-Science Reviews, 150:594–608, 2015.
  11. Deep residual learning for image recognition. In Proceedings of the IEEE conference on computer vision and pattern recognition, pp.  770–778, 2016.
  12. Rpbee: Performance-based earthquake engineering on a regional scale. Earthquake Spectra, 39(3):1328–1351, 2023.
  13. METEOR: Exposure data classification, metadata population and confidence assessment. report m3. 2/p. Technical report, British Geological Survey, 2019.
  14. Deep neural network regression for normalized digital surface model generation with sentinel-2 imagery. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2023.
  15. A building classification system for multi-hazard risk assessment. International Journal of Disaster Risk Science, 13(2):161–177, 2022.
  16. Continental-scale building detection from high resolution satellite imagery. arXiv preprint arXiv:2107.12283, 2021.
  17. Emily So. Data and its role in reducing the risk of disasters in the built environment. Natural hazards, 119(2):1127–1130, 2023.
  18. UNDRR. Global assessment report on disaster risk reduction 2013. https://www.undrr.org/publication/global-assessment-report-disaster-risk-reduction-2013, 2013.
  19. UNDRR. Global assessment report on disaster risk reduction 2015. https://www.undrr.org/publication/global-assessment-report-disaster-risk-reduction-2015, 2015.
  20. UNDRR. Global assessment report on disaster risk reduction 2019. https://www.undrr.org/publication/global-assessment-report-disaster-risk-reduction-2019, 2019.
  21. UNDRR. Global assessment report on disaster risk reduction 2022. https://www.undrr.org/publication/global-assessment-report-disaster-risk-reduction-2022-gar, 2022.
  22. UNDRR. Summary of the high-level meeting of the United Nations General Assembly on the midterm review of the implementation of the Sendai Framework for Disaster Risk Reduction 2015–2030. https://sendaiframework-mtr.undrr.org/media/88350, 2023. Accessed: 2023-07-01.
  23. UNISDR. Sendai framework for disaster risk reduction 2015–2030. http://www.wcdrr.org/uploads/Sendai_Framework_for_Disaster_Risk_Reduction_2015-2030.pdf, 2015. Accessed: 2023-07-01.

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