TL;DR
GraphVSSM is a novel probabilistic spatiotemporal model that integrates graph deep learning, state-space modeling, and variational inference to assess regional disaster vulnerability using satellite time-series data.
Contribution
The paper introduces GraphVSSM, a new modular approach combining graph neural networks, state-space models, and variational inference for dynamic vulnerability assessment.
Findings
Demonstrated in Quezon City, Philippines
Analyzed cyclone and mudslide impacts in Bangladesh and Sierra Leone
Created METEOR 2.5D dataset enhancing global static data
Abstract
Regional disaster resilience quantifies the changing nature of physical risks to inform policy instruments ranging from local immediate recovery to international sustainable development. While many existing state-of-practice methods have greatly advanced the dynamic mapping of exposure and hazard, our understanding of large-scale physical vulnerability has remained static, costly, limited, region-specific, coarse-grained, overly aggregated, and inadequately calibrated. With the significant growth in the availability of time-series satellite imagery and derived products for exposure and hazard, we focus our work on the equally important yet challenging element of the risk equation: physical vulnerability. We leverage machine learning methods that flexibly capture spatial contextual relationships, limited temporal observations, and uncertainty in a unified probabilistic spatiotemporal…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
