Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.

The present paper proposes a novel kernel adaptive filtering algorithm, where each Gaussian kernel is parameterized by a center vector and a symmetric positive definite (SPD) precision matrix, which is regarded as a generalization of scalar width parameter. In fact, different from conventional kerne...

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Main Authors: Tomoya Wada, Kosuke Fukumori, Toshihisa Tanaka, Simone Fiori
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0237654
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spelling doaj-f5b9f41750d44cfe9082d20e783acfa82021-03-03T22:00:45ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01158e023765410.1371/journal.pone.0237654Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.Tomoya WadaKosuke FukumoriToshihisa TanakaSimone FioriThe present paper proposes a novel kernel adaptive filtering algorithm, where each Gaussian kernel is parameterized by a center vector and a symmetric positive definite (SPD) precision matrix, which is regarded as a generalization of scalar width parameter. In fact, different from conventional kernel adaptive systems, the proposed filter is structured as a superposition of non-isotropic Gaussian kernels, whose non-isotropy makes the filter more flexible. The adaptation algorithm will search for optimal parameters in a wider parameter space. This generalization brings the need of special treatment of parameters that have a geometric structure. In fact, the main contribution of this paper is to establish update rules for precision matrices on the Lie group of SPD matrices in order to ensure their symmetry and positive-definiteness. The parameters of this filter are adapted on the basis of a least-squares criterion to minimize the filtering error, together with an ℓ1-type regularization criterion to avoid overfitting and to prevent the increase of dimensionality of the dictionary. Experimental results confirm the validity of the proposed method.https://doi.org/10.1371/journal.pone.0237654
collection DOAJ
language English
format Article
sources DOAJ
author Tomoya Wada
Kosuke Fukumori
Toshihisa Tanaka
Simone Fiori
spellingShingle Tomoya Wada
Kosuke Fukumori
Toshihisa Tanaka
Simone Fiori
Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
PLoS ONE
author_facet Tomoya Wada
Kosuke Fukumori
Toshihisa Tanaka
Simone Fiori
author_sort Tomoya Wada
title Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
title_short Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
title_full Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
title_fullStr Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
title_full_unstemmed Anisotropic Gaussian kernel adaptive filtering by Lie-group dictionary learning.
title_sort anisotropic gaussian kernel adaptive filtering by lie-group dictionary learning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description The present paper proposes a novel kernel adaptive filtering algorithm, where each Gaussian kernel is parameterized by a center vector and a symmetric positive definite (SPD) precision matrix, which is regarded as a generalization of scalar width parameter. In fact, different from conventional kernel adaptive systems, the proposed filter is structured as a superposition of non-isotropic Gaussian kernels, whose non-isotropy makes the filter more flexible. The adaptation algorithm will search for optimal parameters in a wider parameter space. This generalization brings the need of special treatment of parameters that have a geometric structure. In fact, the main contribution of this paper is to establish update rules for precision matrices on the Lie group of SPD matrices in order to ensure their symmetry and positive-definiteness. The parameters of this filter are adapted on the basis of a least-squares criterion to minimize the filtering error, together with an ℓ1-type regularization criterion to avoid overfitting and to prevent the increase of dimensionality of the dictionary. Experimental results confirm the validity of the proposed method.
url https://doi.org/10.1371/journal.pone.0237654
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AT toshihisatanaka anisotropicgaussiankerneladaptivefilteringbyliegroupdictionarylearning
AT simonefiori anisotropicgaussiankerneladaptivefilteringbyliegroupdictionarylearning
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