An Adaptive Bayesian Framework for Recovery of Sources with Structured Sparsity

12/10/2019
by   Ali Bereyhi, et al.
0

In oversampled adaptive sensing (OAS), noisy measurements are collected in multiple subframes. The sensing basis in each subframe is adapted according to some posterior information exploited from previous measurements. The framework is shown to significantly outperform the classic non-adaptive compressive sensing approach. This paper extends the notion of OAS to signals with structured sparsity. We develop a low-complexity OAS algorithm based on structured orthogonal sensing. Our investigations depict that the proposed algorithm outperforms the conventional non-adaptive compressive sensing framework with group LASSO recovery via a rather small number of subframes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/18/2013

On the Fundamental Limits of Recovering Tree Sparse Vectors from Noisy Linear Measurements

Recent breakthrough results in compressive sensing (CS) have established...
research
01/30/2018

Fast Binary Compressive Sensing via ℓ_0 Gradient Descent

We present a fast Compressive Sensing algorithm for the reconstruction o...
research
02/26/2021

Oversampled Adaptive Sensing via a Predefined Codebook

Oversampled adaptive sensing (OAS) is a Bayesian framework recently prop...
research
11/15/2018

Oversampled Adaptive Sensing with Random Projections: Analysis and Algorithmic Approaches

Oversampled adaptive sensing (OAS) is a recently proposed Bayesian frame...
research
11/29/2011

Efficient Adaptive Compressive Sensing Using Sparse Hierarchical Learned Dictionaries

Recent breakthrough results in compressed sensing (CS) have established ...
research
02/08/2018

Oversampled Adaptive Sensing

We develop a Bayesian framework for sensing which adapts the sensing tim...
research
01/25/2012

Task-Driven Adaptive Statistical Compressive Sensing of Gaussian Mixture Models

A framework for adaptive and non-adaptive statistical compressive sensin...

Please sign up or login with your details

Forgot password? Click here to reset