English

Recursive Flow: A Generative Framework for MIMO Channel Estimation

Information Theory 2026-01-26 v2 math.IT

Abstract

Channel estimation is a fundamental challenge in massive multiple-input multiple-output systems, where estimation accuracy governs the spectral efficiency and link reliability. In this work, we introduce Recursive Flow (RC-Flow), a novel solver that leverages pre-trained flow matching priors to robustly recover channel state information from noisy, under-determined measurements. Different from conventional open-loop generative models, our approach establishes a closed-loop refinement framework via a serial restart mechanism and anchored trajectory rectification. By synergizing flow-consistent prior directions with data-fidelity proximal projections, the proposed RC-Flow achieves robust channel reconstruction and delivers state-of-the-art performance across diverse noise levels, particularly in noise-dominated scenarios. The framework is further augmented by an adaptive dual-scheduling strategy, offering flexible management of the trade-off between convergence speed and reconstruction accuracy. Theoretically, we analyze the Jacobian spectral radius of the recursive operator to prove its global asymptotic stability. Numerical results demonstrate that RC-Flow reduces inference latency by two orders of magnitude while achieving a 2.7 dB performance gain in low signal-to-noise ratio regimes compared to the score-based baseline.

Keywords

Cite

@article{arxiv.2601.15767,
  title  = {Recursive Flow: A Generative Framework for MIMO Channel Estimation},
  author = {Zehua Jiang and Fenghao Zhu and Chongwen Huang and Richeng Jin and Zhaohui Yang and Xiaoming Chen and Zhaoyang Zhang and Mérouane Debbah},
  journal= {arXiv preprint arXiv:2601.15767},
  year   = {2026}
}