MFC-RFNet: A Multi-scale Guided Rectified Flow Network for Radar Sequence Prediction
Wenjie Luo, Chuanhu Deng, Chaorong Li, Rongyao Deng, Qiang Yang

TL;DR
MFC-RFNet is a novel multi-scale generative framework for radar sequence prediction that improves accuracy and detail by integrating feature fusion, spatial alignment, and long-range dependency modeling.
Contribution
The paper introduces MFC-RFNet, combining multi-scale communication, guided feature fusion, and rectified flow training for enhanced radar nowcasting performance.
Findings
Consistent improvements over baselines on four datasets.
Clearer echo morphology at higher rain-rate thresholds.
Sustained skill at longer lead times.
Abstract
Accurate and high-resolution precipitation nowcasting from radar echo sequences is crucial for disaster mitigation and economic planning, yet it remains a significant challenge. Key difficulties include modeling complex multi-scale evolution, correcting inter-frame feature misalignment caused by displacement, and efficiently capturing long-range spatiotemporal context without sacrificing spatial fidelity. To address these issues, we present the Multi-scale Feature Communication Rectified Flow (RF) Network (MFC-RFNet), a generative framework that integrates multi-scale communication with guided feature fusion. To enhance multi-scale fusion while retaining fine detail, a Wavelet-Guided Skip Connection (WGSC) preserves high-frequency components, and a Feature Communication Module (FCM) promotes bidirectional cross-scale interaction. To correct inter-frame displacement, a Condition-Guided…
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