Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.

Photonic signals are broadly exploited in communication and sensing and they typically exhibit Poisson-like statistics. In a common scenario where the intensity of the photonic signals is low and one needs to remove a nonstationary trend of the signals for any further analysis, one faces an obstacle...

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Main Authors: Michaela Poplová, Pavel Sovka, Michal Cifra
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5720749?pdf=render
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spelling doaj-3aab998cfc9d403686c6f922e9d618bd2020-11-25T02:25:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011212e018862210.1371/journal.pone.0188622Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.Michaela PoplováPavel SovkaMichal CifraPhotonic signals are broadly exploited in communication and sensing and they typically exhibit Poisson-like statistics. In a common scenario where the intensity of the photonic signals is low and one needs to remove a nonstationary trend of the signals for any further analysis, one faces an obstacle: due to the dependence between the mean and variance typical for a Poisson-like process, information about the trend remains in the variance even after the trend has been subtracted, possibly yielding artifactual results in further analyses. Commonly available detrending or normalizing methods cannot cope with this issue. To alleviate this issue we developed a suitable pre-processing method for the signals that originate from a Poisson-like process. In this paper, a Poisson pre-processing method for nonstationary time series with Poisson distribution is developed and tested on computer-generated model data and experimental data of chemiluminescence from human neutrophils and mung seeds. The presented method transforms a nonstationary Poisson signal into a stationary signal with a Poisson distribution while preserving the type of photocount distribution and phase-space structure of the signal. The importance of the suggested pre-processing method is shown in Fano factor and Hurst exponent analysis of both computer-generated model signals and experimental photonic signals. It is demonstrated that our pre-processing method is superior to standard detrending-based methods whenever further signal analysis is sensitive to variance of the signal.http://europepmc.org/articles/PMC5720749?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Michaela Poplová
Pavel Sovka
Michal Cifra
spellingShingle Michaela Poplová
Pavel Sovka
Michal Cifra
Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
PLoS ONE
author_facet Michaela Poplová
Pavel Sovka
Michal Cifra
author_sort Michaela Poplová
title Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
title_short Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
title_full Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
title_fullStr Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
title_full_unstemmed Poisson pre-processing of nonstationary photonic signals: Signals with equality between mean and variance.
title_sort poisson pre-processing of nonstationary photonic signals: signals with equality between mean and variance.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Photonic signals are broadly exploited in communication and sensing and they typically exhibit Poisson-like statistics. In a common scenario where the intensity of the photonic signals is low and one needs to remove a nonstationary trend of the signals for any further analysis, one faces an obstacle: due to the dependence between the mean and variance typical for a Poisson-like process, information about the trend remains in the variance even after the trend has been subtracted, possibly yielding artifactual results in further analyses. Commonly available detrending or normalizing methods cannot cope with this issue. To alleviate this issue we developed a suitable pre-processing method for the signals that originate from a Poisson-like process. In this paper, a Poisson pre-processing method for nonstationary time series with Poisson distribution is developed and tested on computer-generated model data and experimental data of chemiluminescence from human neutrophils and mung seeds. The presented method transforms a nonstationary Poisson signal into a stationary signal with a Poisson distribution while preserving the type of photocount distribution and phase-space structure of the signal. The importance of the suggested pre-processing method is shown in Fano factor and Hurst exponent analysis of both computer-generated model signals and experimental photonic signals. It is demonstrated that our pre-processing method is superior to standard detrending-based methods whenever further signal analysis is sensitive to variance of the signal.
url http://europepmc.org/articles/PMC5720749?pdf=render
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