Geometry-aware similarity learning on SPD manifolds for visual recognition

Symmetric positive definite (SPD) matrices have been employed for data representation in many visual recognition tasks. The success is mainly attributed to learning discriminative SPD matrices encoding the Riemannian geometry of the underlying SPD manifolds. In this paper, we propose a geometry-awar...

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Main Authors: HUANG, Zhiwu, WANG, R., LI, X., LIU, W., SHAN, S., VAN, Gool L., CHEN, X
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Language:English
Published: Institutional Knowledge at Singapore Management University 2018
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Online Access:https://ink.library.smu.edu.sg/sis_research/6385
https://ink.library.smu.edu.sg/context/sis_research/article/7388/viewcontent/Geometry_aware_Similarity_Learning.pdf
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spelling sg-smu-ink.sis_research-73882021-11-23T02:40:26Z Geometry-aware similarity learning on SPD manifolds for visual recognition HUANG, Zhiwu WANG, R. LI, X. LIU, W. SHAN, S. VAN, Gool L. CHEN, X Symmetric positive definite (SPD) matrices have been employed for data representation in many visual recognition tasks. The success is mainly attributed to learning discriminative SPD matrices encoding the Riemannian geometry of the underlying SPD manifolds. In this paper, we propose a geometry-aware SPD similarity learning (SPDSL) framework to learn discriminative SPD features by directly pursuing a manifold-manifold transformation matrix of full column rank. Specifically, by exploiting the Riemannian geometry of the manifolds of fixed-rank positive semidefinite (PSD) matrices, we present a new solution to reduce optimization over the space of column full-rank transformation matrices to optimization on the PSD manifold, which has a well-established Riemannian structure. Under this solution, we exploit a new supervised SPDSL technique to learn the manifold-manifold transformation by regressing the similarities of selected SPD data pairs to their ground-truth similarities on the target SPD manifold. To optimize the proposed objective function, we further derive an optimization algorithm on the PSD manifold. Evaluations on three visual classification tasks show the advantages of the proposed approach over the existing SPD-based discriminant learning methods. 2018-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6385 info:doi/10.1109/TCSVT.2017.2729660 https://ink.library.smu.edu.sg/context/sis_research/article/7388/viewcontent/Geometry_aware_Similarity_Learning.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Discriminative SPD matrices;Riemannian geometry;SPD manifold;geometry-aware SPD similarity learning;PSD manifold Databases and Information Systems Graphics and Human Computer Interfaces
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Discriminative SPD matrices;Riemannian geometry;SPD manifold;geometry-aware SPD similarity learning;PSD manifold
Databases and Information Systems
Graphics and Human Computer Interfaces
spellingShingle Discriminative SPD matrices;Riemannian geometry;SPD manifold;geometry-aware SPD similarity learning;PSD manifold
Databases and Information Systems
Graphics and Human Computer Interfaces
HUANG, Zhiwu
WANG, R.
LI, X.
LIU, W.
SHAN, S.
VAN, Gool L.
CHEN, X
Geometry-aware similarity learning on SPD manifolds for visual recognition
description Symmetric positive definite (SPD) matrices have been employed for data representation in many visual recognition tasks. The success is mainly attributed to learning discriminative SPD matrices encoding the Riemannian geometry of the underlying SPD manifolds. In this paper, we propose a geometry-aware SPD similarity learning (SPDSL) framework to learn discriminative SPD features by directly pursuing a manifold-manifold transformation matrix of full column rank. Specifically, by exploiting the Riemannian geometry of the manifolds of fixed-rank positive semidefinite (PSD) matrices, we present a new solution to reduce optimization over the space of column full-rank transformation matrices to optimization on the PSD manifold, which has a well-established Riemannian structure. Under this solution, we exploit a new supervised SPDSL technique to learn the manifold-manifold transformation by regressing the similarities of selected SPD data pairs to their ground-truth similarities on the target SPD manifold. To optimize the proposed objective function, we further derive an optimization algorithm on the PSD manifold. Evaluations on three visual classification tasks show the advantages of the proposed approach over the existing SPD-based discriminant learning methods.
format text
author HUANG, Zhiwu
WANG, R.
LI, X.
LIU, W.
SHAN, S.
VAN, Gool L.
CHEN, X
author_facet HUANG, Zhiwu
WANG, R.
LI, X.
LIU, W.
SHAN, S.
VAN, Gool L.
CHEN, X
author_sort HUANG, Zhiwu
title Geometry-aware similarity learning on SPD manifolds for visual recognition
title_short Geometry-aware similarity learning on SPD manifolds for visual recognition
title_full Geometry-aware similarity learning on SPD manifolds for visual recognition
title_fullStr Geometry-aware similarity learning on SPD manifolds for visual recognition
title_full_unstemmed Geometry-aware similarity learning on SPD manifolds for visual recognition
title_sort geometry-aware similarity learning on spd manifolds for visual recognition
publisher Institutional Knowledge at Singapore Management University
publishDate 2018
url https://ink.library.smu.edu.sg/sis_research/6385
https://ink.library.smu.edu.sg/context/sis_research/article/7388/viewcontent/Geometry_aware_Similarity_Learning.pdf
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