A Variational Bayesian Inference-Inspired Unrolled Deep Network for MIMO Detection
Abstract
The great success of deep learning (DL) has inspired researchers to develop more accurate and efficient symbol detectors for multi-input multi-output (MIMO) systems. Existing DL-based MIMO detectors, however, suffer several drawbacks. To address these issues, in this paper, we develop a model-driven DL detector based on variational Bayesian inference. Specifically, the proposed unrolled DL architecture is inspired by an inverse-free variational Bayesian learning framework which circumvents matrix inversion via maximizing a relaxed evidence lower bound. Two networks are respectively developed for independent and identically distributed (i.i.d.) Gaussian channels and arbitrarily correlated channels. The proposed networks, referred to as VBINet, have only a few learnable parameters and thus can be efficiently trained with a moderate amount of training samples. The proposed VBINet-based detectors can work in both offline and online training modes. An important advantage of our proposed networks over state-of-the-art MIMO detection networks such as OAMPNet and MMNet is that the VBINet can automatically learn the noise variance from data, thus yielding a significant performance improvement over the OAMPNet and MMNet in the presence of noise variance uncertainty. Simulation results show that the proposed VBINet-based detectors achieve competitive performance for both i.i.d. Gaussian and realistic 3GPP MIMO channels.
Cite
@article{arxiv.2109.12275,
title = {A Variational Bayesian Inference-Inspired Unrolled Deep Network for MIMO Detection},
author = {Qian Wan and Jun Fang and Yinsen Huang and Huiping Duan and Hongbin Li},
journal= {arXiv preprint arXiv:2109.12275},
year = {2022}
}
Comments
This paper has been accepted by IEEE Transactions on Signal Processing for future publication