Generative Diffusion Models for High Dimensional Channel Estimation

IF 10.7 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Wireless Communications Pub Date : 2025-03-17 DOI:10.1109/TWC.2025.3549592
Xingyu Zhou;Le Liang;Jing Zhang;Peiwen Jiang;Yong Li;Shi Jin
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Abstract

Along with the prosperity of generative artificial intelligence (AI), its potential for solving conventional challenges in wireless communications has also surfaced. Inspired by this trend, we investigate the application of the advanced diffusion models (DMs), a representative class of generative AI models, to high dimensional wireless channel estimation. By capturing the structure of multiple-input multiple-output (MIMO) wireless channels via a deep generative prior encoded by DMs, we develop a novel posterior inference method for channel reconstruction. We further adapt the proposed method to recover channel information from low-resolution quantized measurements. Additionally, to enhance the over-the-air viability, we integrate the DM with the unsupervised Stein’s unbiased risk estimator to enable learning from noisy observations and circumvent the requirements for ground truth channel data that is hardly available in practice. Results reveal that the proposed estimator achieves high-fidelity channel recovery while reducing estimation latency by a factor of 10 compared to state-of-the-art schemes, facilitating real-time implementation. Moreover, our method outperforms existing estimators while reducing the pilot overhead by half, showcasing its scalability to ultra-massive antenna arrays.
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高维信道估计的生成扩散模型
随着生成式人工智能(AI)的蓬勃发展,它在解决无线通信领域传统挑战方面的潜力也浮出水面。受这一趋势的启发,我们研究了高级扩散模型(DMs)在高维无线信道估计中的应用,DMs是一类具有代表性的生成人工智能模型。通过DMs编码的深度生成先验捕获多输入多输出(MIMO)无线信道的结构,提出了一种用于信道重构的后验推理方法。我们进一步采用该方法从低分辨率量化测量中恢复信道信息。此外,为了提高空中生存能力,我们将DM与无监督Stein无偏风险估计器集成,以实现从噪声观测中学习,并规避对实际中难以获得的地面真实信道数据的要求。结果表明,与最先进的方案相比,所提出的估计器实现了高保真的信道恢复,同时将估计延迟减少了10倍,促进了实时实现。此外,我们的方法优于现有的估计方法,同时将导频开销减少了一半,展示了其对超大规模天线阵列的可扩展性。
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来源期刊
CiteScore
18.60
自引率
10.60%
发文量
708
审稿时长
5.6 months
期刊介绍: The IEEE Transactions on Wireless Communications is a prestigious publication that showcases cutting-edge advancements in wireless communications. It welcomes both theoretical and practical contributions in various areas. The scope of the Transactions encompasses a wide range of topics, including modulation and coding, detection and estimation, propagation and channel characterization, and diversity techniques. The journal also emphasizes the physical and link layer communication aspects of network architectures and protocols. The journal is open to papers on specific topics or non-traditional topics related to specific application areas. This includes simulation tools and methodologies, orthogonal frequency division multiplexing, MIMO systems, and wireless over optical technologies. Overall, the IEEE Transactions on Wireless Communications serves as a platform for high-quality manuscripts that push the boundaries of wireless communications and contribute to advancements in the field.
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