基于lmmse的压缩信号干扰抑制方法

Longmei Zhou, Zhuo Sun, Na Wu, Wenbo Wang
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引用次数: 0

摘要

压缩感知(CS)是创新5G系统的可行来源,也是处理大规模机器对机器通信(MMC)数据冗余问题的有效技术,因为它可以用比Nyquist-Shannon采样理论要求的更少的样本恢复稀疏和近似稀疏的信号。信号中的干扰会给信号处理带来一系列问题,即CS中与干扰能量成正比的恢复误差。本文提出了一种基于线性最小均方误差(LMMSE)的压缩干扰预滤波器。主要贡献是将两种实用的估计方法分别基于自相关函数和自协方差函数用于估计基于lmmse的滤波矩阵。该估计和预滤波算法可以实际地集成到压缩信号处理框架中,提高了对噪声和干扰的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LMMSE-based interference mitigation method for compressive signal
Compressive sensing (CS) is a viable source of an innovative 5G system, what's more, it's an effective technology to deal with the data redundancy problem of massive machine-to-machine communication (MMC), since it enables the recovery of sparse and approximately sparse signals with significantly fewer samples than demanded by Nyquist-Shannon sampling theory. Interference in signal will lead a series problem to signal processing, which will be a recovery error proportional to the interference energy in CS. This paper tries to mitigate interference by proposing a compressive interference pre-filter based on linear minimal mean square error (LMMSE). The main contributions are that two practical estimation methods that based on autocorrelation function and auto-covariance function respectively, are applied to estimate the LMMSE-based filtering matrix. The estimation and pre-filter algorithms can be practically integrated into the compressive signal processing framework with improved robust property to noise and interference.
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