Deep learning-based channel estimation has been recognized as a promising technique for sixth-generation wireless systems. However, most existing approaches rely solely on least-squares estimates obtained from demodulation reference signals, which fail to explicitly exploit channel time-frequency correlation parameters. Inspired by the independent channel parameter estimation enabled by semi-static reference signals in modern wireless systems, this letter presents a parameter-aware deep learning-based channel estimation framework termed HyperCEUNet. Specifically, the proposed hypernetwork generates an adaptive front-end convolutional layer based on estimated channel parameters, serving as a pre-filtering stage before the UNet-based estimator. In addition, the Wiener-filtered channel estimates are adopted to provide a correlation-aware initialization for data resources. Simulation results demonstrate that our proposed HyperCEUNet effectively improves channel estimation accuracy compared with its conventional counterparts.
@article{arxiv.2604.21484,
title = {HyperCEUNet: Parameter-Aware Hypernetwork-Driven UNet for Channel Estimation},
author = {Ke Ma and Feng Wang and Lihui Lei and Shu Tan},
journal= {arXiv preprint arXiv:2604.21484},
year = {2026}
}
Comments
5 pages, 5 figures. This manuscript has been submitted to IEEE for possible publication