On reconstruction algorithms for signals sparse in Hermite and Fourier domains

09/17/2019
by   Milos Brajovic, et al.
0

This thesis consists of original contributions in the area of digital signal processing. The reconstruction of signals sparse (highly concentrated) in various transform domains is the primary problem analyzed in the thesis. The considered domains include Fourier, discrete Hermite, one-dimensional and two-dimensional discrete cosine transform, as well as various time-frequency representations. Sparse signals are reconstructed using sparsity measures, being, in fact, the measures of signal concentration in the considered domains. The thesis analyzes the compressive sensing reconstruction algorithms and introduces new approaches to the problem at hand. The missing samples influence on analyzed transform domains is studied in detail, establishing the relations with the general compressive sensing theory. This study provides new insights on phenomena arising due to the reduced number of signal samples. The theoretical contributions involve new exact mathematical expressions which describe performance and outcomes of reconstruction algorithms, also including the study of the influence of additive noise, sparsity level and the number of available measurements on the reconstruction performance, exact expressions for reconstruction errors and error probabilities. Parameter optimization of the discrete Hermite transform is also studied, as well as the additive noise influence on Hermite coefficients, resulting in new parameter optimization and denoising algorithms. Additionally, an algorithm for the decomposition of multivariate multicomponent signals is introduced, as well as an instantaneous frequency estimation algorithm based on the Wigner distribution. Extensive numerical examples and experiments with real and synthetic data validate the presented theory and shed a new light on practical applications of the results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/08/2018

The Hermite and Fourier transforms in sparse reconstruction of sinusoidal signals

The paper observes the Hermite and the Fourier Transform domains in term...
research
03/27/2020

RANSAC-Based Signal Denoising Using Compressive Sensing

In this paper, we present an approach to the reconstruction of signals e...
research
07/01/2019

Quantization in Compressive Sensing: A Signal Processing Approach

Influence of the finite-length registers and quantization effects on the...
research
03/25/2015

Compressed sensing MRI using masked DCT and DFT measurements

This paper presents modification of the TwIST algorithm for Compressive ...
research
03/31/2019

On the Decomposition of Multivariate Nonstationary Multicomponent Signals

With their ability to handle an increased amount of information, multiva...
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
01/09/2022

Signal Reconstruction from Quantized Noisy Samples of the Discrete Fourier Transform

In this paper, we present two variations of an algorithm for signal reco...

Please sign up or login with your details

Forgot password? Click here to reset