WaveC2R: Wavelet-Driven Coarse-to-Refined Hierarchical Learning for Radar Retrieval

Authors

  • Chunlei Shi Southeast University
  • Han Xu Southeast University
  • Yinghao Li Sun Yat-sen University
  • Yi-Lin Wei Sun Yat-sen University
  • Yongchao Feng Beihang University
  • Yecheng Zhang Tsinghua University
  • Dan Niu Southeast University, Heavy Rainfall Research Center of China, China Meteorological Administration Xiong'an Atmospheric Boundary Layer KeyLaboratory

DOI:

https://doi.org/10.1609/aaai.v40i11.37850

Abstract

Satellite-based radar retrieval methods are widely employed to fill coverage gaps in ground-based radar systems, especially in remote areas affected by terrain blockage and limited detection range. Existing methods predominantly rely on overly simplistic spatial-domain architectures constructed from a single data source, limiting their ability to accurately capture complex precipitation patterns and sharply defined meteorological boundaries. To address these limitations, we propose WaveC2R, a novel wavelet-driven coarse-to-refined framework for radar retrieval. WaveC2R integrates complementary multi-source data and leverages frequency-domain decomposition to separately model low-frequency components for capturing precipitation patterns and high-frequency components for delineating sharply defined meteorological boundaries. Specifically, WaveC2R consists of two stages (i) Intensity-Boundary Decoupled Learning, which leverages wavelet decomposition and frequency-specific loss functions to separately optimize low-frequency intensity and high-frequency boundaries; and (ii) Detail-Enhanced Diffusion Refinement, which employs frequency-aware conditional priors and multi-source data to progressively enhance fine-scale precipitation structures while preserving coarse-scale meteorological consistency. Experimental results on the publicly available SEVIR dataset demonstrate that WaveC2R achieves state-of-the-art performance in satellite-based radar retrieval, particularly excelling at preserving high-intensity precipitation features and sharply defined meteorological boundaries.

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Published

2026-03-14

How to Cite

Shi, C., Xu, H., Li, Y., Wei, Y.-L., Feng, Y., Zhang, Y., & Niu, D. (2026). WaveC2R: Wavelet-Driven Coarse-to-Refined Hierarchical Learning for Radar Retrieval. Proceedings of the AAAI Conference on Artificial Intelligence, 40(11), 8951–8959. https://doi.org/10.1609/aaai.v40i11.37850

Issue

Section

AAAI Technical Track on Computer Vision VIII