Rapid building damage assessment workflow: An implementation for the
2023 Rolling Fork, Mississippi tornado event
- URL: http://arxiv.org/abs/2306.12589v2
- Date: Thu, 24 Aug 2023 21:26:05 GMT
- Title: Rapid building damage assessment workflow: An implementation for the
2023 Rolling Fork, Mississippi tornado event
- Authors: Caleb Robinson, Simone Fobi Nsutezo, Anthony Ortiz, Tina Sederholm,
Rahul Dodhia, Cameron Birge, Kasie Richards, Kris Pitcher, Paulo Duarte, Juan
M. Lavista Ferres
- Abstract summary: This paper introduces a human-in-the-loop workflow for rapidly training building damage assessment models after a natural disaster.
This article details a case study using this workflow, executed in partnership with the American Red Cross during a tornado event in Rolling Fork, Mississippi in March, 2023.
The output from our human-in-the-loop modeling process achieved a precision of 0.86 and recall of 0.80 for damaged buildings when compared to ground truth data collected post-disaster.
- Score: 4.08156787395201
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Rapid and accurate building damage assessments from high-resolution satellite
imagery following a natural disaster is essential to inform and optimize first
responder efforts. However, performing such building damage assessments in an
automated manner is non-trivial due to the challenges posed by variations in
disaster-specific damage, diversity in satellite imagery, and the dearth of
extensive, labeled datasets. To circumvent these issues, this paper introduces
a human-in-the-loop workflow for rapidly training building damage assessment
models after a natural disaster. This article details a case study using this
workflow, executed in partnership with the American Red Cross during a tornado
event in Rolling Fork, Mississippi in March, 2023. The output from our
human-in-the-loop modeling process achieved a precision of 0.86 and recall of
0.80 for damaged buildings when compared to ground truth data collected
post-disaster. This workflow was implemented end-to-end in under 2 hours per
satellite imagery scene, highlighting its potential for real-time deployment.
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