In this paper we study Monte Carlo type approaches to Bayesian sparse inference under a squared error loss. This problem arises in Compressed Sensing, where sparse signals are to be estimated and where recovery performance is measured in terms of the expected sum of squared error. In this setting, it is common knowledge that the mean over the posterior is the optimal estimator. The problem is however that the posterior distribution has to be estimated, which is extremely difficult. We here contrast approaches that use a Monte Carlo estimate for the posterior mean. The randomised Iterative Hard Thresholding algorithm is compared to a new approach that is inspired by sequential importance sampling and uses a bootstrap re-sampling step based o...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
This paper deals with adaptive sparse approximations of time-series. The work is based on a Bayesian...
In this paper we present a set of theoretical results regard-ing inference algorithms for hierarchic...
Compressed sensing is a technique for recovering an unknown sparse signal from a small number of lin...
In sparse Bayesian learning (SBL) approximate Bayesian inference is applied to find sparse estimates...
In this paper, we consider the theoretical bound of the probability of error in compressed sensing (...
This chapter provides the use of Bayesian inference in compressive sensing (CS), a method in signal ...
AbstractCompressed sensing is a technique to sample compressible signals below the Nyquist rate, whi...
Compressed sensing and sparse signal modeling have attracted considerable research interest in recen...
Abstract—We propose a Bayesian based algorithm to recover sparse signals from compressed noisy measu...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Abstract—Sparse Bayesian learning (SBL) is a popular ap-proach to sparse signal recovery in compress...
Abstract—While the theory of compressed sensing provides means to reliably and efficiently acquire a...
The central problem of Compressed Sensing is to recover a sparse signal from fewer measurements than...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
This paper deals with adaptive sparse approximations of time-series. The work is based on a Bayesian...
In this paper we present a set of theoretical results regard-ing inference algorithms for hierarchic...
Compressed sensing is a technique for recovering an unknown sparse signal from a small number of lin...
In sparse Bayesian learning (SBL) approximate Bayesian inference is applied to find sparse estimates...
In this paper, we consider the theoretical bound of the probability of error in compressed sensing (...
This chapter provides the use of Bayesian inference in compressive sensing (CS), a method in signal ...
AbstractCompressed sensing is a technique to sample compressible signals below the Nyquist rate, whi...
Compressed sensing and sparse signal modeling have attracted considerable research interest in recen...
Abstract—We propose a Bayesian based algorithm to recover sparse signals from compressed noisy measu...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
We relate compressed sensing (CS) with Bayesian experimental design and provide a novel efficient ap...
Abstract—Sparse Bayesian learning (SBL) is a popular ap-proach to sparse signal recovery in compress...
Abstract—While the theory of compressed sensing provides means to reliably and efficiently acquire a...
The central problem of Compressed Sensing is to recover a sparse signal from fewer measurements than...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
This paper deals with adaptive sparse approximations of time-series. The work is based on a Bayesian...
In this paper we present a set of theoretical results regard-ing inference algorithms for hierarchic...