Multimodal Learning 相关度: 8/10

CSI-tuples-based 3D Channel Fingerprints Construction Assisted by MultiModal Learning

Chenjie Xie, Li You, Ruirong Chen, Gaoning He, Xiqi Gao
arXiv: 2603.25288v1 发布: 2026-03-26 更新: 2026-03-26

AI 摘要

论文提出了一种基于CSI-tuples和多模态学习的3D信道指纹构建框架,提高低空通信环境感知精度。

主要贡献

  • 提出基于CSI-tuples的3D信道指纹模型
  • 设计了包含Corr-MMF、MMR和CSI-R模块的多模态框架
  • 验证了框架在3D-CF构建上的高效性和优越性

方法论

将3D-CF构建视为多模态回归任务,利用LAV位置、通信测量和地理环境图估计CSI-tuple中的信道信息,通过多模态融合和回归实现。

原文摘要

Low-altitude communications can promote the integration of aerial and terrestrial wireless resources, expand network coverage, and enhance transmission quality, thereby empowering the development of sixth-generation (6G) mobile communications. As an enabler for low-altitude transmission, 3D channel fingerprints (3D-CF), also referred to as the 3D radio map or 3D channel knowledge map, are expected to enhance the understanding of communication environments and assist in the acquisition of channel state information (CSI), thereby avoiding repeated estimations and reducing computational complexity. In this paper, we propose a modularized multimodal framework to construct 3D-CF. Specifically, we first establish the 3D-CF model as a collection of CSI-tuples based on Rician fading channels, with each tuple comprising the low-altitude vehicle's (LAV) positions and its corresponding statistical CSI. In consideration of the heterogeneous structures of different prior data, we formulate the 3D-CF construction problem as a multimodal regression task, where the target channel information in the CSI-tuple can be estimated directly by its corresponding LAV positions, together with communication measurements and geographic environment maps. Then, a high-efficiency multimodal framework is proposed accordingly, which includes a correlation-based multimodal fusion (Corr-MMF) module, a multimodal representation (MMR) module, and a CSI regression (CSI-R) module. Numerical results show that our proposed framework can efficiently construct 3D-CF and achieve at least 27.5% higher accuracy than the state-of-the-art algorithms under different communication scenarios, demonstrating its competitive performance and excellent generalization ability. We also analyze the computational complexity and illustrate its superiority in terms of the inference time.

标签

3D信道指纹 多模态学习 低空通信 信道状态信息 6G

arXiv 分类

cs.IT cs.AI cs.ET cs.LG eess.SP