The Mehler-Fock Transform in Signal Processing

Many signals can be described as functions on the unit disk (ball). In the framework of group representations it is well-known how to construct Hilbert-spaces containing these functions that have the groups SU(1,N) as their symmetry groups. One illustration of this construction is three-dimensional...

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Main Author: Reiner Lenz
Format: Article
Language:English
Published: MDPI AG 2017-06-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/19/6/289
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spelling doaj-69849591663a406ba45125f4e932042a2020-11-24T21:11:23ZengMDPI AGEntropy1099-43002017-06-0119628910.3390/e19060289e19060289The Mehler-Fock Transform in Signal ProcessingReiner Lenz0Department of Electrical Engineering, Linköping University, SE-581 83 Linköping, SwedenMany signals can be described as functions on the unit disk (ball). In the framework of group representations it is well-known how to construct Hilbert-spaces containing these functions that have the groups SU(1,N) as their symmetry groups. One illustration of this construction is three-dimensional color spaces in which chroma properties are described by points on the unit disk. A combination of principal component analysis and the Perron-Frobenius theorem can be used to show that perspective projections map positive signals (i.e., functions with positive values) to a product of the positive half-axis and the unit ball. The representation theory (harmonic analysis) of the group SU(1,1) leads to an integral transform, the Mehler-Fock-transform (MFT), that decomposes functions, depending on the radial coordinate only, into combinations of associated Legendre functions. This transformation is applied to kernel density estimators of probability distributions on the unit disk. It is shown that the transform separates the influence of the data and the measured data. The application of the transform is illustrated by studying the statistical distribution of RGB vectors obtained from a common set of object points under different illuminants.http://www.mdpi.com/1099-4300/19/6/289Mehler-Fock transformkernel density estimatorsignal processingharmonic analysisSU(1,1)positive signals
collection DOAJ
language English
format Article
sources DOAJ
author Reiner Lenz
spellingShingle Reiner Lenz
The Mehler-Fock Transform in Signal Processing
Entropy
Mehler-Fock transform
kernel density estimator
signal processing
harmonic analysis
SU(1,1)
positive signals
author_facet Reiner Lenz
author_sort Reiner Lenz
title The Mehler-Fock Transform in Signal Processing
title_short The Mehler-Fock Transform in Signal Processing
title_full The Mehler-Fock Transform in Signal Processing
title_fullStr The Mehler-Fock Transform in Signal Processing
title_full_unstemmed The Mehler-Fock Transform in Signal Processing
title_sort mehler-fock transform in signal processing
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2017-06-01
description Many signals can be described as functions on the unit disk (ball). In the framework of group representations it is well-known how to construct Hilbert-spaces containing these functions that have the groups SU(1,N) as their symmetry groups. One illustration of this construction is three-dimensional color spaces in which chroma properties are described by points on the unit disk. A combination of principal component analysis and the Perron-Frobenius theorem can be used to show that perspective projections map positive signals (i.e., functions with positive values) to a product of the positive half-axis and the unit ball. The representation theory (harmonic analysis) of the group SU(1,1) leads to an integral transform, the Mehler-Fock-transform (MFT), that decomposes functions, depending on the radial coordinate only, into combinations of associated Legendre functions. This transformation is applied to kernel density estimators of probability distributions on the unit disk. It is shown that the transform separates the influence of the data and the measured data. The application of the transform is illustrated by studying the statistical distribution of RGB vectors obtained from a common set of object points under different illuminants.
topic Mehler-Fock transform
kernel density estimator
signal processing
harmonic analysis
SU(1,1)
positive signals
url http://www.mdpi.com/1099-4300/19/6/289
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