Can compressed sensing be efficient in communication with sparse data?

Nam H. Nguyen, T. Sexton
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Abstract

L User Equipments (mobile stations) transmit signals with sparsity S and their signals are compressively sensed to M samples by Z remote samplers (a distributed antenna arrangement) and the uplink channel is estimated by a central processor (the “central brain”). For a given system signal to noise ratio, retained samples M and sparsity S, we approximate the loss in sum mutual information due to imperfect knowledge of the channel. The approximation is premised on a lower bound of the mutual information which accounts for the power in the channel estimation error. Also, throughput results are given for adaptively adjusting the sparsity of multiple users' transmit signals based on channel fading.
压缩感知能有效地与稀疏数据通信吗?
L个用户设备(移动站)发送稀疏度为S的信号,其信号被Z个远程采样器(分布式天线布置)压缩感知到M个采样点,上行信道由中央处理器(“中央大脑”)估计。对于给定的系统信噪比,保留的样本M和稀疏度S,我们近似的损失总和互信息由于不完全了解信道。该近似以互信息的下界为前提,该下界解释了信道估计误差中的功率。给出了基于信道衰落自适应调整多用户发射信号稀疏度的吞吐量结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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