Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion

This thesis provides an evaluation of the Redundant Discrete Wavelet Transform with application to the removal of additive white or colored Gaussian noise on a synthetic GPR signal. Special attention is given to the parameter that controls the number of decomposition levels. Evaluation is performed...

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Main Author: Harrison, Dustin
Language:English
Published: 2009
Online Access:http://hdl.handle.net/2429/16564
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spelling ndltd-UBC-oai-circle.library.ubc.ca-2429-165642018-01-05T17:38:25Z Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion Harrison, Dustin This thesis provides an evaluation of the Redundant Discrete Wavelet Transform with application to the removal of additive white or colored Gaussian noise on a synthetic GPR signal. Special attention is given to the parameter that controls the number of decomposition levels. Evaluation is performed using a level-dependent threshold to estimate and remove noise. Results are presented using noisy synthetic Ground Penetrating Radar pulses to compare Wiener filtering and thresholding the Redundant and Non-redundant Discrete Wavelet transform. Additional results are presented on the effects of choosing a number of decomposition levels using signal-to-noise ratio measurements, which suggest the importance of choosing this parameter. Recommendations are made and supported which determine the order of thresholding before or after the practice of trace averaging. Using GPR images, an application of a novel 2D threshold model in the newly discovered curvelet domain is compared to average trace subtraction. Promising results are presented on both synthetic and actual landmine data, which shows thresholding as a viable method of clutter suppression. Applied Science, Faculty of Electrical and Computer Engineering, Department of Graduate 2009-12-11T21:28:27Z 2009-12-11T21:28:27Z 2005 2005-11 Text Thesis/Dissertation http://hdl.handle.net/2429/16564 eng For non-commercial purposes only, such as research, private study and education. Additional conditions apply, see Terms of Use https://open.library.ubc.ca/terms_of_use.
collection NDLTD
language English
sources NDLTD
description This thesis provides an evaluation of the Redundant Discrete Wavelet Transform with application to the removal of additive white or colored Gaussian noise on a synthetic GPR signal. Special attention is given to the parameter that controls the number of decomposition levels. Evaluation is performed using a level-dependent threshold to estimate and remove noise. Results are presented using noisy synthetic Ground Penetrating Radar pulses to compare Wiener filtering and thresholding the Redundant and Non-redundant Discrete Wavelet transform. Additional results are presented on the effects of choosing a number of decomposition levels using signal-to-noise ratio measurements, which suggest the importance of choosing this parameter. Recommendations are made and supported which determine the order of thresholding before or after the practice of trace averaging. Using GPR images, an application of a novel 2D threshold model in the newly discovered curvelet domain is compared to average trace subtraction. Promising results are presented on both synthetic and actual landmine data, which shows thresholding as a viable method of clutter suppression. === Applied Science, Faculty of === Electrical and Computer Engineering, Department of === Graduate
author Harrison, Dustin
spellingShingle Harrison, Dustin
Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
author_facet Harrison, Dustin
author_sort Harrison, Dustin
title Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
title_short Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
title_full Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
title_fullStr Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
title_full_unstemmed Threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
title_sort threshold estimation using wavelets and curvelets on ground penetrating radar data for noise and clutter suppresion
publishDate 2009
url http://hdl.handle.net/2429/16564
work_keys_str_mv AT harrisondustin thresholdestimationusingwaveletsandcurveletsongroundpenetratingradardatafornoiseandcluttersuppresion
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