Signal enhancement using time-frequency based denoising

Approved for public release; distribution is unlimited === This thesis investigates and compares time and wavelet-domain denoising techniques where received signals contain broadband noise. We consider how time and wavelet-domain denoising schemes and their combinations compare in the mean squared e...

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Main Author: Hughes, John B.
Other Authors: Fargues, Monique P.
Published: Monterey, California. Naval Postgraduate School 2012
Online Access:http://hdl.handle.net/10945/6112
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spelling ndltd-nps.edu-oai-calhoun.nps.edu-10945-61122015-02-18T15:55:35Z Signal enhancement using time-frequency based denoising Hughes, John B. Fargues, Monique P. Therrien, Charles W. Electrical Engineering Approved for public release; distribution is unlimited This thesis investigates and compares time and wavelet-domain denoising techniques where received signals contain broadband noise. We consider how time and wavelet-domain denoising schemes and their combinations compare in the mean squared error sense. This work applies Wiener prediction and Median filtering as they do not require any prior signal knowledge. In the wavelet-domain we use soft or hard thresholding on the detail coefficients. In addition, we explore the effect of these wavelet-domain thresholding techniques on the coefficients associated with cycle-spinning and the newly proposed recursive cycle-spinning scheme. Finally, we note that thresholding does not make an attempt to de-noise coefficients that remain after thresholding; therefore we apply time domain techniques to the remaining detail coefficients from the first level of decomposition in an attempt to de-noise them further prior to reconstruction. This thesis applies and compares these techniques using a mean squared error criterion to identify the best performing in a robust test signal environment. We find that soft thresholding with Stein's Unbiased Risk Estimate (SURE) thresholding produces the best mean squared error results in each test case and that the addition of Wiener prediction to the first level of decomposition coefficients leads to a slightly enhanced performance. Finally, we illustrate the effects of denoising algorithms on longer data segments. 2012-03-14T17:47:48Z 2012-03-14T17:47:48Z 2003-03 Thesis http://hdl.handle.net/10945/6112 This publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. As such, it is in the public domain, and under the provisions of Title 17, United States Code, Section 105, it may not be copyrighted. Monterey, California. Naval Postgraduate School
collection NDLTD
sources NDLTD
description Approved for public release; distribution is unlimited === This thesis investigates and compares time and wavelet-domain denoising techniques where received signals contain broadband noise. We consider how time and wavelet-domain denoising schemes and their combinations compare in the mean squared error sense. This work applies Wiener prediction and Median filtering as they do not require any prior signal knowledge. In the wavelet-domain we use soft or hard thresholding on the detail coefficients. In addition, we explore the effect of these wavelet-domain thresholding techniques on the coefficients associated with cycle-spinning and the newly proposed recursive cycle-spinning scheme. Finally, we note that thresholding does not make an attempt to de-noise coefficients that remain after thresholding; therefore we apply time domain techniques to the remaining detail coefficients from the first level of decomposition in an attempt to de-noise them further prior to reconstruction. This thesis applies and compares these techniques using a mean squared error criterion to identify the best performing in a robust test signal environment. We find that soft thresholding with Stein's Unbiased Risk Estimate (SURE) thresholding produces the best mean squared error results in each test case and that the addition of Wiener prediction to the first level of decomposition coefficients leads to a slightly enhanced performance. Finally, we illustrate the effects of denoising algorithms on longer data segments.
author2 Fargues, Monique P.
author_facet Fargues, Monique P.
Hughes, John B.
author Hughes, John B.
spellingShingle Hughes, John B.
Signal enhancement using time-frequency based denoising
author_sort Hughes, John B.
title Signal enhancement using time-frequency based denoising
title_short Signal enhancement using time-frequency based denoising
title_full Signal enhancement using time-frequency based denoising
title_fullStr Signal enhancement using time-frequency based denoising
title_full_unstemmed Signal enhancement using time-frequency based denoising
title_sort signal enhancement using time-frequency based denoising
publisher Monterey, California. Naval Postgraduate School
publishDate 2012
url http://hdl.handle.net/10945/6112
work_keys_str_mv AT hughesjohnb signalenhancementusingtimefrequencybaseddenoising
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