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Main Authors: Gençoğlu, Alp Eren, Ekenel, Hazım Kemal
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.01116
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author Gençoğlu, Alp Eren
Ekenel, Hazım Kemal
author_facet Gençoğlu, Alp Eren
Ekenel, Hazım Kemal
contents Reliable post-disaster building damage assessment (BDA) from satellite imagery is hindered by severe class imbalance, background clutter, and domain shift across disaster types and geographies. In this work, we address these problems and explore ways to improve the MambaBDA, the BDA network of ChangeMamba architecture, one of the most successful BDA models. The approach enhances the MambaBDA with three modular components: (i) Focal Loss to mitigate class imbalance damage classification, (ii) lightweight Attention Gates to suppress irrelevant context, and (iii) a compact Alignment Module to spatially warp pre-event features toward post-event content before decoding. We experiment on multiple satellite imagery datasets, including xBD, Pakistan Flooding, Turkey Earthquake, and Ida Hurricane, and conduct in-domain and crossdataset tests. The proposed modular enhancements yield consistent improvements over the baseline model, with 0.8% to 5% performance gains in-domain, and up to 27% on unseen disasters. This indicates that the proposed enhancements are especially beneficial for the generalization capability of the system.
format Preprint
id arxiv_https___arxiv_org_abs_2603_01116
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Improved MambdaBDA Framework for Robust Building Damage Assessment Across Disaster Domains
Gençoğlu, Alp Eren
Ekenel, Hazım Kemal
Computer Vision and Pattern Recognition
Reliable post-disaster building damage assessment (BDA) from satellite imagery is hindered by severe class imbalance, background clutter, and domain shift across disaster types and geographies. In this work, we address these problems and explore ways to improve the MambaBDA, the BDA network of ChangeMamba architecture, one of the most successful BDA models. The approach enhances the MambaBDA with three modular components: (i) Focal Loss to mitigate class imbalance damage classification, (ii) lightweight Attention Gates to suppress irrelevant context, and (iii) a compact Alignment Module to spatially warp pre-event features toward post-event content before decoding. We experiment on multiple satellite imagery datasets, including xBD, Pakistan Flooding, Turkey Earthquake, and Ida Hurricane, and conduct in-domain and crossdataset tests. The proposed modular enhancements yield consistent improvements over the baseline model, with 0.8% to 5% performance gains in-domain, and up to 27% on unseen disasters. This indicates that the proposed enhancements are especially beneficial for the generalization capability of the system.
title Improved MambdaBDA Framework for Robust Building Damage Assessment Across Disaster Domains
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.01116