Fusing VHR Post-disaster Aerial Imagery and LiDAR Data for Roof
Classification in the Caribbean
- URL: http://arxiv.org/abs/2307.16177v4
- Date: Mon, 9 Oct 2023 07:58:13 GMT
- Title: Fusing VHR Post-disaster Aerial Imagery and LiDAR Data for Roof
Classification in the Caribbean
- Authors: Isabelle Tingzon, Nuala Margaret Cowan, Pierre Chrzanowski
- Abstract summary: We leverage deep learning techniques for the automated classification of roof characteristics from orthophotos and airborne LiDAR data.
This work is intended to help governments produce more timely building information to improve resilience and disaster response in the Caribbean.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate and up-to-date information on building characteristics is essential
for vulnerability assessment; however, the high costs and long timeframes
associated with conducting traditional field surveys can be an obstacle to
obtaining critical exposure datasets needed for disaster risk management. In
this work, we leverage deep learning techniques for the automated
classification of roof characteristics from very high-resolution orthophotos
and airborne LiDAR data obtained in Dominica following Hurricane Maria in 2017.
We demonstrate that the fusion of multimodal earth observation data performs
better than using any single data source alone. Using our proposed methods, we
achieve F1 scores of 0.93 and 0.92 for roof type and roof material
classification, respectively. This work is intended to help governments produce
more timely building information to improve resilience and disaster response in
the Caribbean.
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