TL;DR
Smart Transfer introduces a novel GeoAI framework utilizing vision foundation models for rapid, automated building damage mapping from post-earthquake VHR imagery, enhancing disaster response efficiency.
Contribution
It proposes two innovative model transfer strategies, Pixel-wise Clustering and Distance-Penalized Triplet, for effective cross-region damage mapping using foundation models.
Findings
Promising performance in cross-region transfer settings.
Effective in rapid damage assessment during earthquakes.
Provides scalable, automated damage mapping solution.
Abstract
Living in a changing climate, human society now faces more frequent and severe natural disasters than ever before. As a consequence, rapid disaster response during the "Golden 72 Hours" of search and rescue becomes a vital humanitarian necessity and community concern. However, traditional disaster damage surveys routinely fail to generalize across distinct urban morphologies and new disaster events. Effective damage mapping typically requires exhaustive and time-consuming manual data annotation. To address this issue, we introduce Smart Transfer, a novel Geospatial Artificial Intelligence (GeoAI) framework, leveraging state-of-the-art vision Foundation Models (FMs) for rapid building damage mapping with post-earthquake Very High Resolution (VHR) imagery. Specifically, we design two novel model transfer strategies: first, Pixel-wise Clustering (PC), ensuring robust prototype-level global…
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