HyperCEUNet improves wireless channel estimation accuracy by using a hypernetwork to adapt a UNet's front-end layer based on estimated channel parameters and Wiener-filter initialization.
Sampling-Free Diffusion Transformers for Low-Complexity MIMO Channel Estimation
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Diffusion model-based channel estimators have shown impressive performance but suffer from high computational complexity because they rely on iterative reverse sampling. This paper proposes a sampling-free diffusion transformer (DiT) for low-complexity MIMO channel estimation, termed SF-DiT-CE. Exploiting angular-domain sparsity of MIMO channels, we train a lightweight DiT to directly predict the clean channels from their perturbed observations and noise levels. At inference, the least square (LS) estimate and estimation noise condition the DiT to recover the channel in a single forward pass, eliminating iterative sampling. Numerical results demonstrate that our method achieves superior estimation accuracy and robustness with significantly lower complexity than state-of-the-art baselines.
fields
eess.SP 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
HyperCEUNet: Parameter-Aware Hypernetwork-Driven UNet for Channel Estimation
HyperCEUNet improves wireless channel estimation accuracy by using a hypernetwork to adapt a UNet's front-end layer based on estimated channel parameters and Wiener-filter initialization.