CVNov 18, 2025

Flood-LDM: Generalizable Latent Diffusion Models for rapid and accurate zero-shot High-Resolution Flood Mapping

arXiv:2511.14033v12 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the need for rapid and accurate flood prediction for emergency planning and response, offering a generalizable solution that is incremental over prior machine learning methods.

The paper tackles the problem of generating high-resolution flood maps quickly for real-time risk management by using latent diffusion models to super-resolve coarse-grid flood maps, achieving the accuracy of fine-grid maps while substantially reducing computational time and improving generalizability to unseen geographic areas.

Flood prediction is critical for emergency planning and response to mitigate human and economic losses. Traditional physics-based hydrodynamic models generate high-resolution flood maps using numerical methods requiring fine-grid discretization; which are computationally intensive and impractical for real-time large-scale applications. While recent studies have applied convolutional neural networks for flood map super-resolution with good accuracy and speed, they suffer from limited generalizability to unseen areas. In this paper, we propose a novel approach that leverages latent diffusion models to perform super-resolution on coarse-grid flood maps, with the objective of achieving the accuracy of fine-grid flood maps while significantly reducing inference time. Experimental results demonstrate that latent diffusion models substantially decrease the computational time required to produce high-fidelity flood maps without compromising on accuracy, enabling their use in real-time flood risk management. Moreover, diffusion models exhibit superior generalizability across different physical locations, with transfer learning further accelerating adaptation to new geographic regions. Our approach also incorporates physics-informed inputs, addressing the common limitation of black-box behavior in machine learning, thereby enhancing interpretability. Code is available at https://github.com/neosunhan/flood-diff.

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