LGCVJan 13, 2025

PrecipDiff: Leveraging image diffusion models to enhance satellite-based precipitation observations

arXiv:2501.07447v15 citationsh-index: 12AAAI
Originality Synthesis-oriented
AI Analysis

This addresses the lack of ground monitoring stations in low-income countries by enhancing satellite data for better water-related disaster management, though it is an incremental advancement using existing diffusion models on new data.

The study tackled the problem of improving satellite-based precipitation observations, which suffer from low accuracy and resolution, by introducing a diffusion model for downscaling from 10 km to 1 km resolution, achieving significant improvements in accuracy and bias reduction in experiments in the Seattle region.

A recent report from the World Meteorological Organization (WMO) highlights that water-related disasters have caused the highest human losses among natural disasters over the past 50 years, with over 91\% of deaths occurring in low-income countries. This disparity is largely due to the lack of adequate ground monitoring stations, such as weather surveillance radars (WSR), which are expensive to install. For example, while the US and Europe combined possess over 600 WSRs, Africa, despite having almost one and half times their landmass, has fewer than 40. To address this issue, satellite-based observations offer a global, near-real-time monitoring solution. However, they face several challenges like accuracy, bias, and low spatial resolution. This study leverages the power of diffusion models and residual learning to address these limitations in a unified framework. We introduce the first diffusion model for correcting the inconsistency between different precipitation products. Our method demonstrates the effectiveness in downscaling satellite precipitation estimates from 10 km to 1 km resolution. Extensive experiments conducted in the Seattle region demonstrate significant improvements in accuracy, bias reduction, and spatial detail. Importantly, our approach achieves these results using only precipitation data, showcasing the potential of a purely computer vision-based approach for enhancing satellite precipitation products and paving the way for further advancements in this domain.

Foundations

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

Your Notes