Abstract—We consider signals that follow a parametric dis-tribution where the parameter values are unknown. To estimate such signals from noisy measurements in scalar channels, we study the empirical performance of an empirical Bayes (EB) approach and a full Bayes (FB) approach. We then apply EB and FB to solve compressed sensing (CS) signal estimation problems by successively denoising a scalar Gaussian channel within an approximate message passing (AMP) framework. Our numerical results show that FB achieves better performance than EB in scalar channel denoising problems when the signal dimension is small. In the CS setting, the signal dimension must be large enough for AMP to work well; for large signal dimensions, AMP has similar perform...
Abstract—Compressed sensing typically deals with the es-timation of a system input from its noise-co...
Generalised approximate message passing (GAMP) is an approximate Bayesian estimation algorithm for s...
A denoising algorithm seeks to remove perturbations or errors from a signal. The last three decades ...
Abstract—We consider signals that follow a parametric dis-tribution where the parameter values are u...
The problem of estimating a high-dimensional sparse vector $\boldsymbol{\theta} \in \mathbb{R}^n$ fr...
Abstract—We study compressed sensing (CS) signal recon-struction problems where an input signal is m...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Many systems, including telecommunication systems, radar and imaging systems, biomedical systems, co...
Bayesian approximate message passing (BAMP) is an efficient method in compressed sensing that is nea...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
Compressed sensing (CS) is an emerging technique that exploits the properties of a sparse or compre...
International audienceThe Compressed Sensing (CS) framework outperforms the sampling rate limits giv...
Abstract—Compressed sensing typically deals with the es-timation of a system input from its noise-co...
Generalised approximate message passing (GAMP) is an approximate Bayesian estimation algorithm for s...
A denoising algorithm seeks to remove perturbations or errors from a signal. The last three decades ...
Abstract—We consider signals that follow a parametric dis-tribution where the parameter values are u...
The problem of estimating a high-dimensional sparse vector $\boldsymbol{\theta} \in \mathbb{R}^n$ fr...
Abstract—We study compressed sensing (CS) signal recon-struction problems where an input signal is m...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Many systems, including telecommunication systems, radar and imaging systems, biomedical systems, co...
Bayesian approximate message passing (BAMP) is an efficient method in compressed sensing that is nea...
8 pages, 10 figuresInternational audienceCompressed sensing is designed to measure sparse signals di...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
Compressed sensing (CS) is an emerging technique that exploits the properties of a sparse or compre...
International audienceThe Compressed Sensing (CS) framework outperforms the sampling rate limits giv...
Abstract—Compressed sensing typically deals with the es-timation of a system input from its noise-co...
Generalised approximate message passing (GAMP) is an approximate Bayesian estimation algorithm for s...
A denoising algorithm seeks to remove perturbations or errors from a signal. The last three decades ...