论文标题
使用深层生成网络的高维通道估计
High Dimensional Channel Estimation Using Deep Generative Networks
论文作者
论文摘要
本文通过优化深层生成网络的输入,提出了一种新型的压缩传感(CS)方法来实现高维无线通道估计。使用生成网络的通道估计取决于以下假设:重建的通道位于生成模型的范围内。使用生成先验的通道重建优于常规CS技术,需要更少的飞行员。它还消除了对稀疏基础的先验知识的需求,而是将深层生成模型捕获的结构作为先验。使用此之前,我们还通过一位量化的飞行员测量进行了通道估计,并提出了一种新颖的优化目标函数,该函数试图最大程度地提高接收信号与发电机的通道估计值之间的相关性,同时最大程度地减少通道估计的等级。我们的方法显着优于稀疏信号恢复方法,例如正交匹配追踪(OMP)和近似消息传递(AMP)算法,例如窄带MMWave MMWave通道重建的EM-GM-AMP,并且其执行时间并未受到接收到的飞行员符号数量的增加而明显影响。
This paper presents a novel compressed sensing (CS) approach to high dimensional wireless channel estimation by optimizing the input to a deep generative network. Channel estimation using generative networks relies on the assumption that the reconstructed channel lies in the range of a generative model. Channel reconstruction using generative priors outperforms conventional CS techniques and requires fewer pilots. It also eliminates the need of a priori knowledge of the sparsifying basis, instead using the structure captured by the deep generative model as a prior. Using this prior, we also perform channel estimation from one-bit quantized pilot measurements, and propose a novel optimization objective function that attempts to maximize the correlation between the received signal and the generator's channel estimate while minimizing the rank of the channel estimate. Our approach significantly outperforms sparse signal recovery methods such as Orthogonal Matching Pursuit (OMP) and Approximate Message Passing (AMP) algorithms such as EM-GM-AMP for narrowband mmWave channel reconstruction, and its execution time is not noticeably affected by the increase in the number of received pilot symbols.