Some aspects of signal processing in heavy tailed noise

This thesis addresses some problems that arise in signal processing when the noise is impulsive and follows a heavy tailed distribution. After reviewing several of the more well known heavy- tailed distributions the common problem of which of these hest models the observations is considered. To this...

Full description

Bibliographic Details
Main Author: Brcic, Ramon
Format: Thesis
Language:English
Published: Curtin University 2002
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/323
_version_ 1848743346055413760
author Brcic, Ramon
author_facet Brcic, Ramon
author_sort Brcic, Ramon
building Curtin Institutional Repository
collection Online Access
description This thesis addresses some problems that arise in signal processing when the noise is impulsive and follows a heavy tailed distribution. After reviewing several of the more well known heavy- tailed distributions the common problem of which of these hest models the observations is considered. To this end, a test is proposed for the symmetric alpha stable distribution. The test threshold is found using both asymptotic theory and parametric bootstrap resampling. In doing so, some modifications are proposed for Koutrouvelis' estimator of the symmetric alpha stable distributions parameters that improve performance. In electrical systems impulsive noise is generated externally to the receiver while thermal Gaussian noise is generated internally by the receiver electronics, the resultant noise is an additive combination of these two independent sources. A characteristic function domain estimator for the parameters of the resultant distribution is developed for the case when the impulsive noise is modeled by a symmetric alpha stable distribution. Having concentrated on validation and parameter estimation for the noise model, some problems in signal detection and estimation are considered. Detection of the number of sources impinging on an array is an important first. step in many array processing problems for which the development of optimal methods can be complicated even in the Gaussian case. Here, a multiple hypothesis test for the equality of the eigenvalues of the sample array covariance is proposed.The nonparametric bootstrap is used to estimate the distributions of the test statistics removing the assumption of Gaussianity and offering improved performance for heavy tailed observations. Finally, some robust estimators are proposed for estimating parametric signals in additive noise. These are based on M-estimators but implicitly incorporate an estimate of the noise distribution. enabling the estimator to adapt to the unknown noise distribution. Two estimators are developed, one uses a nonparametric kernel density estimator while the other models the score function of the noise distribution with a linear combination of basis functions.
first_indexed 2025-11-14T05:44:06Z
format Thesis
id curtin-20.500.11937-323
institution Curtin University Malaysia
institution_category Local University
language English
last_indexed 2025-11-14T05:44:06Z
publishDate 2002
publisher Curtin University
recordtype eprints
repository_type Digital Repository
spelling curtin-20.500.11937-3232017-02-20T06:41:18Z Some aspects of signal processing in heavy tailed noise Brcic, Ramon heavy tailed distributions impulsive noise stable distributions signal detection This thesis addresses some problems that arise in signal processing when the noise is impulsive and follows a heavy tailed distribution. After reviewing several of the more well known heavy- tailed distributions the common problem of which of these hest models the observations is considered. To this end, a test is proposed for the symmetric alpha stable distribution. The test threshold is found using both asymptotic theory and parametric bootstrap resampling. In doing so, some modifications are proposed for Koutrouvelis' estimator of the symmetric alpha stable distributions parameters that improve performance. In electrical systems impulsive noise is generated externally to the receiver while thermal Gaussian noise is generated internally by the receiver electronics, the resultant noise is an additive combination of these two independent sources. A characteristic function domain estimator for the parameters of the resultant distribution is developed for the case when the impulsive noise is modeled by a symmetric alpha stable distribution. Having concentrated on validation and parameter estimation for the noise model, some problems in signal detection and estimation are considered. Detection of the number of sources impinging on an array is an important first. step in many array processing problems for which the development of optimal methods can be complicated even in the Gaussian case. Here, a multiple hypothesis test for the equality of the eigenvalues of the sample array covariance is proposed.The nonparametric bootstrap is used to estimate the distributions of the test statistics removing the assumption of Gaussianity and offering improved performance for heavy tailed observations. Finally, some robust estimators are proposed for estimating parametric signals in additive noise. These are based on M-estimators but implicitly incorporate an estimate of the noise distribution. enabling the estimator to adapt to the unknown noise distribution. Two estimators are developed, one uses a nonparametric kernel density estimator while the other models the score function of the noise distribution with a linear combination of basis functions. 2002 Thesis http://hdl.handle.net/20.500.11937/323 en Curtin University fulltext
spellingShingle heavy tailed distributions
impulsive noise
stable distributions
signal detection
Brcic, Ramon
Some aspects of signal processing in heavy tailed noise
title Some aspects of signal processing in heavy tailed noise
title_full Some aspects of signal processing in heavy tailed noise
title_fullStr Some aspects of signal processing in heavy tailed noise
title_full_unstemmed Some aspects of signal processing in heavy tailed noise
title_short Some aspects of signal processing in heavy tailed noise
title_sort some aspects of signal processing in heavy tailed noise
topic heavy tailed distributions
impulsive noise
stable distributions
signal detection
url http://hdl.handle.net/20.500.11937/323