Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals

Wavelet theory has already achieved huge success. For Secondary Ions Mass Spectrometry (SIMS) signals, denoising the secondary signal, which is altered by the measurement, is considered that an essential step prior to applying such a signal processing technique that aims enhance the SIMS signals.The...

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Published in:East European Journal of Physics
Main Authors: Nadia Dahraoui, M'hamed Boulakroune, S. Khelfaoui, S. Kherroubi, Yamina Benkrima
Format: Article
Language:English
Published: V.N. Karazin Kharkiv National University Publishing 2023-09-01
Subjects:
Online Access:https://periodicals.karazin.ua/eejp/article/view/21873
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author Nadia Dahraoui
M'hamed Boulakroune
S. Khelfaoui
S. Kherroubi
Yamina Benkrima
author_facet Nadia Dahraoui
M'hamed Boulakroune
S. Khelfaoui
S. Kherroubi
Yamina Benkrima
author_sort Nadia Dahraoui
collection DOAJ
container_title East European Journal of Physics
description Wavelet theory has already achieved huge success. For Secondary Ions Mass Spectrometry (SIMS) signals, denoising the secondary signal, which is altered by the measurement, is considered that an essential step prior to applying such a signal processing technique that aims enhance the SIMS signals.The most efficient and widely used wavelet denoising method is based on wavelet coefficient thresholding. This process involves three important steps; wavelet decomposition: the input signals are decomposed into wavelet coefficients, thresholding: the wavelet coefficients are modified according to a threshold, and reconstruction: the modified coefficients are used in an inverse transform to obtain the noise-free-signal. Several researchers have used thresholding wavelet denoising techniques. The choice of wavelet type and the level of resolution can have a significant influence; it is important to note that the choice of resolution level depends on the type of signal we are dealing with, the nature of the present noise, and our specific goals for the denoised signal. It is generally recommended to test different resolution levels and evaluate their impact on the quality of the denoised signal before making a final decision. Moreover, the results obtained in wavelet denoising can be significantly influenced by the selection of wavelet types. The chosen wavelet type plays a crucial role in the extraction of signal details. Indeed, the effectiveness of denoising the MD6 sample has been demonstrated by the results obtained with sym4, db8, Haar and coif5 wavelets? These wavelets have effectively reduced noise while preserving crucial signal information, leading to an enhancement in the quality of the denoised signal.
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spelling doaj-cb830e092b67436a82446ffddabf0ef62025-11-02T21:51:41ZengV.N. Karazin Kharkiv National University PublishingEast European Journal of Physics2312-43342312-45392023-09-01349550010.26565/2312-4334-2023-3-5621873Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry SignalsNadia Dahraoui0M'hamed Boulakroune1S. Khelfaoui2S. Kherroubi3Yamina Benkrima4Electronics and Communication Department, Faculty of New Technologies of Information and Communication, University Kasdi Merbah of Ouargla, Ouargla, Algeria; Laboratory of Electrical Engineering Polytechnic Constantine, Electrical and Automatic Department, National Polytechnic School of Constantine, Constantine, AlgeriaLaboratory of Electrical Engineering Polytechnic Constantine, Electrical and Automatic Department, National Polytechnic School of Constantine, Constantine, AlgeriaElectronics and Communication Department, Faculty of New Technologies of Information and Communication, University Kasdi Merbah of Ouargla, Ouargla, AlgeriaElectronics and Communication Department, Faculty of New Technologies of Information and Communication, University Kasdi Merbah of Ouargla, Ouargla, AlgeriaEcole normale supérieure de Ouargla, Ouargla, AlgeriaWavelet theory has already achieved huge success. For Secondary Ions Mass Spectrometry (SIMS) signals, denoising the secondary signal, which is altered by the measurement, is considered that an essential step prior to applying such a signal processing technique that aims enhance the SIMS signals.The most efficient and widely used wavelet denoising method is based on wavelet coefficient thresholding. This process involves three important steps; wavelet decomposition: the input signals are decomposed into wavelet coefficients, thresholding: the wavelet coefficients are modified according to a threshold, and reconstruction: the modified coefficients are used in an inverse transform to obtain the noise-free-signal. Several researchers have used thresholding wavelet denoising techniques. The choice of wavelet type and the level of resolution can have a significant influence; it is important to note that the choice of resolution level depends on the type of signal we are dealing with, the nature of the present noise, and our specific goals for the denoised signal. It is generally recommended to test different resolution levels and evaluate their impact on the quality of the denoised signal before making a final decision. Moreover, the results obtained in wavelet denoising can be significantly influenced by the selection of wavelet types. The chosen wavelet type plays a crucial role in the extraction of signal details. Indeed, the effectiveness of denoising the MD6 sample has been demonstrated by the results obtained with sym4, db8, Haar and coif5 wavelets? These wavelets have effectively reduced noise while preserving crucial signal information, leading to an enhancement in the quality of the denoised signal.https://periodicals.karazin.ua/eejp/article/view/21873sims analysisdiscrete wavelet transformmultiresolution decompositionwavelet shrinckagedenoisingnoise reduction
spellingShingle Nadia Dahraoui
M'hamed Boulakroune
S. Khelfaoui
S. Kherroubi
Yamina Benkrima
Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
sims analysis
discrete wavelet transform
multiresolution decomposition
wavelet shrinckage
denoising
noise reduction
title Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
title_full Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
title_fullStr Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
title_full_unstemmed Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
title_short Effectiveness of Wavelet Denoising on Secondary Ion Mass Spectrometry Signals
title_sort effectiveness of wavelet denoising on secondary ion mass spectrometry signals
topic sims analysis
discrete wavelet transform
multiresolution decomposition
wavelet shrinckage
denoising
noise reduction
url https://periodicals.karazin.ua/eejp/article/view/21873
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AT skhelfaoui effectivenessofwaveletdenoisingonsecondaryionmassspectrometrysignals
AT skherroubi effectivenessofwaveletdenoisingonsecondaryionmassspectrometrysignals
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