Accelerating Post-Tornado Disaster Assessment Using Advanced Deep Learning Models
Journal:
arXiv
Published Date:
Dec 24, 2024
Abstract
Post-disaster assessments of buildings and infrastructure are crucial for
both immediate recovery efforts and long-term resilience planning. This
research introduces an innovative approach to automating post-disaster
assessments through advanced deep learning models. Our proposed system employs
state-of-the-art computer vision techniques (YOLOv11 and ResNet50) to rapidly
analyze images and videos from disaster sites, extracting critical information
about building characteristics, including damage level of structural components
and the extent of damage. Our experimental results show promising performance,
with ResNet50 achieving 90.28% accuracy and an inference time of 1529ms per
image on multiclass damage classification. This study contributes to the field
of disaster management by offering a scalable, efficient, and objective tool
for post-disaster analysis, potentially capable of transforming how communities
and authorities respond to and learn from catastrophic events.