AIOct 21, 2025

Automated urban waterlogging assessment and early warning through a mixture of foundation models

arXiv:2510.18425v1h-index: 9
Originality Synthesis-oriented
AI Analysis

This addresses urban waterlogging assessment for public safety and infrastructure management, representing an incremental advancement by applying existing foundation models to a new domain with semi-supervised fine-tuning.

The study tackled urban waterlogging monitoring by developing UWAssess, a foundation model-driven framework that automatically identifies waterlogged areas in surveillance images and generates structured assessment reports, with evaluations showing substantial improvements in perception performance and reliable report generation.

With climate change intensifying, urban waterlogging poses an increasingly severe threat to global public safety and infrastructure. However, existing monitoring approaches rely heavily on manual reporting and fail to provide timely and comprehensive assessments. In this study, we present Urban Waterlogging Assessment (UWAssess), a foundation model-driven framework that automatically identifies waterlogged areas in surveillance images and generates structured assessment reports. To address the scarcity of labeled data, we design a semi-supervised fine-tuning strategy and a chain-of-thought (CoT) prompting strategy to unleash the potential of the foundation model for data-scarce downstream tasks. Evaluations on challenging visual benchmarks demonstrate substantial improvements in perception performance. GPT-based evaluations confirm the ability of UWAssess to generate reliable textual reports that accurately describe waterlogging extent, depth, risk and impact. This dual capability enables a shift of waterlogging monitoring from perception to generation, while the collaborative framework of multiple foundation models lays the groundwork for intelligent and scalable systems, supporting urban management, disaster response and climate resilience.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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