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Asymptotically optimal linear shrinkage of sample LMMSE and MVDR filters

机译:样品LmmsE和mVDR滤波器的渐近最佳线性收缩

摘要

Conventional implementations of the linearminimum mean-square (LMMSE) and minimum variance distortionless response (MVDR) estimators rely on the sample matrix inversion (SMI) technique, i.e., on the sample covariance matrix (SCM). This approach is optimal in the large sample size regime. Nonetheless, in small sample size situations, those sample estimators suffer a large performance degradation. Thus, the aim of this paper is to propose corrections of these sample methods that counteract their performance degradation in the small sample size regime and keep their optimality in large sample size situations. To this aim, a twofold approach is proposed. First, shrinkage estimators are considered, as they are known to be robust to the small sample size regime. Namely, the proposed methods are based on shrinking the sample LMMSE or sample MVDR filters towards a variously called matched filter or conventional (Bartlett) beamformer in array processing. Second, random matrix theory is used to obtain the optimal shrinkage factors for large filters. The simulation results highlight that the proposed methods outperform the sample LMMSE and MVDR. Also, provided that the sample size is higher than the observation dimension, they improve classical diagonal loading (DL) and Ledoit-Wolf (LW) techniques, which counteract the small sample size degradation by regularizing the SCM. Finally, compared to state-of-the-art DL, the proposed methods reduce the computational cost and the proposed shrinkage of the LMMSE obtains performance gains.
机译:线性最小均方(LMMSE)和最小方差无失真响应(MVDR)估计器的常规实现方式依赖于样本矩阵求逆(SMI)技术,即样本协方差矩阵(SCM)。这种方法在大样本量方案中是最佳的。但是,在小样本量的情况下,那些样本估计量会遭受很大的性能下降。因此,本文的目的是提出对这些样本方法的修正,以抵消它们在小样本量状态下的性能下降,并在大样本量情况下保持最佳状态。为了这个目的,提出了一种双重方法。首先,考虑收缩率估算器,因为众所周知,收缩率估算器对小样本规模方案具有鲁棒性。即,所提出的方法是基于在阵列处理中将样本LMMSE或样本MVDR滤波器缩小到各种称为匹配滤波器或常规(Bartlett)波束形成器的。其次,随机矩阵理论用于获得大型滤波器的最佳收缩因子。仿真结果表明,所提出的方法优于样本LMMSE和MVDR。同样,只要样本量大于观察尺寸,它们就会改善经典对角线加载(DL)和Ledoit-Wolf(LW)技术,这些技术可通过对SCM进行正规化来抵消小样本量的降低。最后,与最新的DL相比,所提出的方法降低了计算成本,并且所提出的LMMSE缩小带来了性能提升。

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