Flood-DamageSense: Multimodal Mamba with Multitask Learning for Building Flood Damage Assessment using SAR Remote Sensing Imagery
Journal:
arXiv
Published Date:
Jun 7, 2025
Abstract
Most post-disaster damage classifiers succeed only when destructive forces
leave clear spectral or structural signatures -- conditions rarely present
after inundation. Consequently, existing models perform poorly at identifying
flood-related building damages. The model presented in this study,
Flood-DamageSense, addresses this gap as the first deep-learning framework
purpose-built for building-level flood-damage assessment. The architecture
fuses pre- and post-event SAR/InSAR scenes with very-high-resolution optical
basemaps and an inherent flood-risk layer that encodes long-term exposure
probabilities, guiding the network toward plausibly affected structures even
when compositional change is minimal. A multimodal Mamba backbone with a
semi-Siamese encoder and task-specific decoders jointly predicts (1) graded
building-damage states, (2) floodwater extent, and (3) building footprints.
Training and evaluation on Hurricane Harvey (2017) imagery from Harris County,
Texas -- supported by insurance-derived property-damage extents -- show a mean
F1 improvement of up to 19 percentage points over state-of-the-art baselines,
with the largest gains in the frequently misclassified "minor" and "moderate"
damage categories. Ablation studies identify the inherent-risk feature as the
single most significant contributor to this performance boost. An end-to-end
post-processing pipeline converts pixel-level outputs to actionable,
building-scale damage maps within minutes of image acquisition. By combining
risk-aware modeling with SAR's all-weather capability, Flood-DamageSense
delivers faster, finer-grained, and more reliable flood-damage intelligence to
support post-disaster decision-making and resource allocation.