Deploying Rapid Damage Assessments from sUAS Imagery for Disaster Response
Thomas Manzini, Priyankari Perali, Robin R. Murphy

TL;DR
This paper introduces the first operational AI/ML system for automating building damage assessment from sUAS imagery during disasters, significantly speeding up response efforts by analyzing large volumes of imagery efficiently.
Contribution
It develops and deploys a novel damage assessment model trained on the largest sUAS imagery dataset, demonstrating real-world application during major hurricanes.
Findings
Assessed 415 buildings in 18 minutes during disasters.
Trained on 21,716 damage labels from post-disaster imagery.
Provided practical lessons for deploying AI/ML in disaster response.
Abstract
This paper presents the first AI/ML system for automating building damage assessment in uncrewed aerial systems (sUAS) imagery to be deployed operationally during federally declared disasters (Hurricanes Debby and Helene). In response to major disasters, sUAS teams are dispatched to collect imagery of the affected areas to assess damage; however, at recent disasters, teams collectively delivered between 47GB and 369GB of imagery per day, representing more imagery than can reasonably be transmitted or interpreted by subject matter experts in the disaster scene, thus delaying response efforts. To alleviate this data avalanche encountered in practice, computer vision and machine learning techniques are necessary. While prior work has been deployed to automatically assess damage in satellite imagery, there is no current state of practice for sUAS-based damage assessment systems, as all…
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Taxonomy
TopicsRemote-Sensing Image Classification · Flood Risk Assessment and Management · 3D Surveying and Cultural Heritage
