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Journal ArticleDOI

Bayesian Compressive Sensing Using Laplace Priors

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TLDR
This paper model the components of the compressive sensing (CS) problem, i.e., the signal acquisition process, the unknown signal coefficients and the model parameters for the signal and noise using the Bayesian framework and develops a constructive (greedy) algorithm designed for fast reconstruction useful in practical settings.
Abstract
In this paper, we model the components of the compressive sensing (CS) problem, i.e., the signal acquisition process, the unknown signal coefficients and the model parameters for the signal and noise using the Bayesian framework. We utilize a hierarchical form of the Laplace prior to model the sparsity of the unknown signal. We describe the relationship among a number of sparsity priors proposed in the literature, and show the advantages of the proposed model including its high degree of sparsity. Moreover, we show that some of the existing models are special cases of the proposed model. Using our model, we develop a constructive (greedy) algorithm designed for fast reconstruction useful in practical settings. Unlike most existing CS reconstruction methods, the proposed algorithm is fully automated, i.e., the unknown signal coefficients and all necessary parameters are estimated solely from the observation, and, therefore, no user-intervention is needed. Additionally, the proposed algorithm provides estimates of the uncertainty of the reconstructions. We provide experimental results with synthetic 1-D signals and images, and compare with the state-of-the-art CS reconstruction algorithms demonstrating the superior performance of the proposed approach.

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Citations
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Journal ArticleDOI

A novel approach for missing data prediction in coevolving time series

TL;DR: This paper proposes a novel approach based on the compressive sensing theory and sparse Bayesian learning theory for missing data prediction in coevolving time series that can simultaneously solve multiple sparse estimation takes without the requirement of auxiliary information.
Proceedings Article

Accurate signal recovery in quantized compressed sensing

TL;DR: An algorithm is proposed based on a Bayesian perspective that treats measurement noises and quantization errors separately and allows data saturation and is shown to improve the recovery accuracy in comparison with existing approaches by numerical simulations.
Journal ArticleDOI

Bayesian compressive sensing for thermal imagery using Gaussian-Jeffreys prior

TL;DR: A Bayesian CS reconstruction algorithm that makes use of a new sparsity-inducing prior, referred as Gaussian-Jeffreys prior, is presented, and performance gain of imposing this new prior on thermal imagery where the signal-to-noise ratio is low is demonstrated.
Journal ArticleDOI

Digital TV Signal Based Airborne Passive Radar Clutter Suppression via a Parameter-Searched Algorithm

TL;DR: A parameter-searched two-dimensional multiple measurement vectors based orthogonal matching pursuit (MOMP) algorithm is proposed to solve the off-grid (basis mismatch) problem and reduce the computational complexity at the same time, and thus to more accurately and effectively estimate the clutter covariance matrix.
References
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Book

Pattern Recognition and Machine Learning

TL;DR: Probability Distributions, linear models for Regression, Linear Models for Classification, Neural Networks, Graphical Models, Mixture Models and EM, Sampling Methods, Continuous Latent Variables, Sequential Data are studied.
Journal ArticleDOI

Pattern Recognition and Machine Learning

Radford M. Neal
- 01 Aug 2007 - 
TL;DR: This book covers a broad range of topics for regular factorial designs and presents all of the material in very mathematical fashion and will surely become an invaluable resource for researchers and graduate students doing research in the design of factorial experiments.
Book

Compressed sensing

TL;DR: It is possible to design n=O(Nlog(m)) nonadaptive measurements allowing reconstruction with accuracy comparable to that attainable with direct knowledge of the N most important coefficients, and a good approximation to those N important coefficients is extracted from the n measurements by solving a linear program-Basis Pursuit in signal processing.
Journal ArticleDOI

Robust uncertainty principles: exact signal reconstruction from highly incomplete frequency information

TL;DR: In this paper, the authors considered the model problem of reconstructing an object from incomplete frequency samples and showed that with probability at least 1-O(N/sup -M/), f can be reconstructed exactly as the solution to the lscr/sub 1/ minimization problem.
Journal ArticleDOI

Atomic Decomposition by Basis Pursuit

TL;DR: Basis Pursuit (BP) is a principle for decomposing a signal into an "optimal" superposition of dictionary elements, where optimal means having the smallest l1 norm of coefficients among all such decompositions.
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