Low-Complexity MIMO Channel Estimation with Latent Diffusion Models
By: Xiaotian Fan , Xingyu Zhou , Le Liang and more
Potential Business Impact:
Improves wireless signals for faster internet.
Deep generative models offer a powerful alternative to conventional channel estimation by learning the complex prior distribution of wireless channels. Capitalizing on this potential, this paper proposes a novel channel estimation algorithm based on latent diffusion models (LDMs), termed posterior sampling with latent diffusion for channel estimation (PSLD-CE). The core of our approach is a lightweight LDM architecture specifically designed for channel estimation, which serves as a powerful generative prior to capture the intricate channel distribution. Furthermore, we enhance the diffusion posterior sampling process by introducing an effective approximation for the likelihood term and a tailored self-consistency constraint on the variational autoencoder latent space. Extensive experimental results demonstrate that PSLD-CE consistently outperforms a wide range of existing methods. Notably, these significant performance gains are achieved while maintaining low computational complexity and fast inference speed, establishing our method as a highly promising and practical solution for next-generation wireless systems.
Similar Papers
Robust MIMO Channel Estimation Using Energy-Based Generative Diffusion Models
Information Theory
Improves wireless signals for faster internet.
Latent Diffusion Model Based Denoising Receiver for 6G Semantic Communication: From Stochastic Differential Theory to Application
Machine Learning (CS)
Makes messages clear even with bad signals.
WaveLLDM: Design and Development of a Lightweight Latent Diffusion Model for Speech Enhancement and Restoration
Sound
Cleans up noisy audio, even long missing parts.