UAV-based urban structural damage assessment using object-based image analysis and semantic reasoning

Author:

Fernandez Galarreta J.,Kerle N.,Gerke M.

Abstract

Abstract. Structural damage assessment is critical after disasters but remains a challenge. Many studies have explored the potential of remote sensing data, but limitations of vertical data persist. Oblique imagery has been identified as more useful, though the multi-angle imagery also adds a new dimension of complexity. This paper addresses damage assessment based on multi-perspective, overlapping, very high resolution oblique images obtained with unmanned aerial vehicles (UAVs). 3-D point-cloud assessment for the entire building is combined with detailed object-based image analysis (OBIA) of façades and roofs. This research focuses not on automatic damage assessment, but on creating a methodology that supports the often ambiguous classification of intermediate damage levels, aiming at producing comprehensive per-building damage scores. We identify completely damaged structures in the 3-D point cloud, and for all other cases provide the OBIA-based damage indicators to be used as auxiliary information by damage analysts. The results demonstrate the usability of the 3-D point-cloud data to identify major damage features. Also the UAV-derived and OBIA-processed oblique images are shown to be a suitable basis for the identification of detailed damage features on façades and roofs. Finally, we also demonstrate the possibility of aggregating the multi-perspective damage information at building level.

Publisher

Copernicus GmbH

Subject

General Earth and Planetary Sciences

Reference38 articles.

1. ArcGIS: Mapping & analysis for understanding our world: http://www.esri.com/software/arcgis, last access: 18 December 2013.

2. ATC 20-2 Appendix A: Guidelines for owners and occupants of damaged buildings: https://www.atcouncil.org/pdfs/ATC202appendixA.pdf (last access: 5 August 2013), 2005.

3. Autodesk-123D: 123D Catch, Generate 3D models from photos, http://www.123dapp.com/, last access: 5 July 2014.

4. Baggio, C., Bernardini, A., Colozza, R., Corazza, L., Della-Bella, M., Di-Pasquale, G., Dolce, M., Goretti, A., Martinelli, A., Orsini, G., Papa, F., and Zuccaro, G.: Field manual for post-earthquake damage and safety assessment and short term countermeasures (AeDES), Italy 018-5593, JRC Scientific and Technical Reports, Luxembourg, 2007.

5. Barrington, L., Ghosh, S., Greene, M., Har-Noy, S., Berger, J., Gill, S., Lin, A. Y. M., and Huyck, C.: Crowdsourcing earthquake damage assessment using remote sensing imagery, Ann. Geophys., 54, 680–687, https://doi.org/10.4401/ag-5324, 2011.

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