Compressive Sampling Using EM Algorithm

05/21/2014
by   Atanu Kumar Ghosh, et al.
0

Conventional approaches of sampling signals follow the celebrated theorem of Nyquist and Shannon. Compressive sampling, introduced by Donoho, Romberg and Tao, is a new paradigm that goes against the conventional methods in data acquisition and provides a way of recovering signals using fewer samples than the traditional methods use. Here we suggest an alternative way of reconstructing the original signals in compressive sampling using EM algorithm. We first propose a naive approach which has certain computational difficulties and subsequently modify it to a new approach which performs better than the conventional methods of compressive sampling. The comparison of the different approaches and the performance of the new approach has been studied using simulated data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/19/2019

Sub-Nyquist Sampling of Sparse and Correlated Signals in Array Processing

This paper considers efficient sampling of simultaneously sparse and cor...
research
02/05/2019

Comparison of some commonly used algorithms for sparse signal reconstruction

Due to excessive need for faster propagations of signals and necessity t...
research
03/31/2013

Compressive adaptive computational ghost imaging

Compressive sensing is considered a huge breakthrough in signal acquisit...
research
03/06/2019

SAT-based Compressive Sensing

We propose to reduce the original problem of compressive sensing to the ...
research
11/04/2022

Embracing Off-the-Grid Samples

Many empirical studies suggest that samples of continuous-time signals t...
research
02/01/2016

Learning Data Triage: Linear Decoding Works for Compressive MRI

The standard approach to compressive sampling considers recovering an un...
research
02/08/2019

Object tracking in video signals using Compressive Sensing

Reducing the number of pixels in video signals while maintaining quality...

Please sign up or login with your details

Forgot password? Click here to reset