Multimodal Learning 相关度: 5/10

RadioDiff-FS: Physics-Informed Manifold Alignment in Few-Shot Diffusion Models for High-Fidelity Radio Map Construction

Xiucheng Wang, Zixuan Guo, Nan Cheng
arXiv: 2603.18865v1 发布: 2026-03-19 更新: 2026-03-19

AI 摘要

RadioDiff-FS利用少量样本,构建高保真无线电地图,有效降低了建模成本。

主要贡献

  • 提出RadioDiff-FS框架,用于少量样本下的无线电地图构建
  • 基于多径分解理论,提出方向一致性损失(DCL)
  • 实验证明,该方法在静态和动态无线电地图上均优于基线方法

方法论

利用预训练的diffusion模型,结合物理信息的多径分解和方向一致性损失,进行少量样本下的模型微调。

原文摘要

Radio maps (RMs) provide spatially continuous propagation characterizations essential for 6G network planning, but high-fidelity RM construction remains challenging. Rigorous electromagnetic solvers incur prohibitive computational latency, while data-driven models demand massive labeled datasets and generalize poorly from simplified simulations to complex multipath environments. This paper proposes RadioDiff-FS, a few-shot diffusion framework that adapts a pre-trained main-path generator to multipath-rich target domains with only a small number of high-fidelity samples. The adaptation is grounded in a theoretical decomposition of the multipath RM into a dominant main-path component and a directionally sparse residual. This decomposition shows that the cross-domain shift corresponds to a bounded and geometrically structured feature translation rather than an arbitrary distribution change. A Direction-Consistency Loss (DCL) is then introduced to constrain diffusion score updates along physically plausible propagation directions, suppressing phase-inconsistent artifacts that arise in the low-data regime. Experiments show that RadioDiff-FS reduces NMSE by 59.5% on static RMs and by 74.0% on dynamic RMs relative to the vanilla diffusion baseline, achieving an SSIM of 0.9752 and a PSNR of 36.37 dB under severely limited supervision.

标签

无线电地图 diffusion模型 少量样本学习 物理信息 多径信道

arXiv 分类

eess.SY cs.LG