High SNR Consistent Compressive Sensing

03/10/2017
by   Sreejith Kallummil, et al.
0

High signal to noise ratio (SNR) consistency of model selection criteria in linear regression models has attracted a lot of attention recently. However, most of the existing literature on high SNR consistency deals with model order selection. Further, the limited literature available on the high SNR consistency of subset selection procedures (SSPs) is applicable to linear regression with full rank measurement matrices only. Hence, the performance of SSPs used in underdetermined linear models (a.k.a compressive sensing (CS) algorithms) at high SNR is largely unknown. This paper fills this gap by deriving necessary and sufficient conditions for the high SNR consistency of popular CS algorithms like l_0-minimization, basis pursuit de-noising or LASSO, orthogonal matching pursuit and Dantzig selector. Necessary conditions analytically establish the high SNR inconsistency of CS algorithms when used with the tuning parameters discussed in literature. Novel tuning parameters with SNR adaptations are developed using the sufficient conditions and the choice of SNR adaptations are discussed analytically using convergence rate analysis. CS algorithms with the proposed tuning parameters are numerically shown to be high SNR consistent and outperform existing tuning parameters in the moderate to high SNR regime.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/17/2018

High SNR Consistent Compressive Sensing Without Signal and Noise Statistics

Recovering the support of sparse vectors in underdetermined linear regre...
research
05/06/2018

Residual Ratio Thresholding for Model Order Selection

Model order selection (MOS) in linear regression models is a widely stud...
research
03/15/2017

Tuning Free Orthogonal Matching Pursuit

Orthogonal matching pursuit (OMP) is a widely used compressive sensing (...
research
11/05/2018

Non-Local Compressive Sensing Based SAR Tomography

Tomographic SAR (TomoSAR) inversion of urban areas is an inherently spar...
research
02/13/2022

Misspecification Analysis of High-Dimensional Random Effects Models for Estimation of Signal-to-Noise Ratios

Estimation of signal-to-noise ratios and noise variances in high-dimensi...
research
06/04/2020

On the Minimax Optimality of the EM Algorithm for Learning Two-Component Mixed Linear Regression

We study the convergence rates of the EM algorithm for learning two-comp...
research
11/03/2010

The Lasso under Heteroscedasticity

The performance of the Lasso is well understood under the assumptions of...

Please sign up or login with your details

Forgot password? Click here to reset