From Swath to Full-Disc: Advancing Precipitation Retrieval with Multimodal Knowledge Expansion

Accurate near-real-time precipitation retrieval has been enhanced by satellite-based technologies. However, infrared-based algorithms have low accuracy due to weak relations with surface precipitation, whereas passive microwave and radar-based methods are more accurate but limited in range. This challenge motivates the Precipitation Retrieval Expansion (PRE) task, which aims to enable accurate, infrared-based full-disc precipitation retrievals beyond the scanning swath. We introduce Multimodal Knowledge Expansion, a two-stage pipeline with the proposed PRE-Net model. In the Swath-Distilling stage, PRE-Net transfers knowledge from a multimodal data integration model to an infrared-based model within the scanning swath via Coordinated Masking and Wavelet Enhancement (CoMWE). In the Full-Disc Adaptation stage, Self-MaskTune refines predictions across the full disc by balancing multimodal and full-disc infrared knowledge. Experiments on the introduced PRE benchmark demonstrate that PRE-Net significantly advanced precipitation retrieval performance, outperforming leading products like PERSIANN-CCS, PDIR, and IMERG. The code will be available atthis https URL.
View on arXiv@article{wang2025_2506.07050, title={ From Swath to Full-Disc: Advancing Precipitation Retrieval with Multimodal Knowledge Expansion }, author={ Zheng Wang and Kai Ying and Bin Xu and Chunjiao Wang and Cong Bai }, journal={arXiv preprint arXiv:2506.07050}, year={ 2025 } }