Data-driven Super-Resolution of Flood Inundation Maps using Synthetic Simulations
Akshay Aravamudan, Zimeena Rasheed, Xi Zhang, Kira E. Scarpignato,, Efthymios I. Nikolopoulos, Witold F. Krajewski, Georgios C. Anagnostopoulos

TL;DR
This paper demonstrates that deep learning models trained on synthetic data can effectively enhance low-resolution water maps into high-resolution flood inundation maps, improving flood monitoring accuracy and enabling transferability to similar regions.
Contribution
It introduces a data-driven super-resolution approach using synthetic simulations to improve flood inundation mapping from low- to high-resolution data.
Findings
Supervised models outperform non-data-driven methods.
Synthetic data effectively trains models for real-world applications.
Models show strong zero-shot transferability to similar regions.
Abstract
The frequency of extreme flood events is increasing throughout the world. Daily, high-resolution (30m) Flood Inundation Maps (FIM) observed from space play a key role in informing mitigation and preparedness efforts to counter these extreme events. However, the temporal frequency of publicly available high-resolution FIMs, e.g., from Landsat, is at the order of two weeks thus limiting the effective monitoring of flood inundation dynamics. Conversely, global, low-resolution (~300m) Water Fraction Maps (WFM) are publicly available from NOAA VIIRS daily. Motivated by the recent successes of deep learning methods for single image super-resolution, we explore the effectiveness and limitations of similar data-driven approaches to downscaling low-resolution WFMs to high-resolution FIMs. To overcome the scarcity of high-resolution FIMs, we train our models with high-quality synthetic data…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Vision and Imaging
