Palmprint Identification Using an Ensemble of Sparse Representations
Among various palmprint identification methods proposed in the literature, sparse representation for classification (SRC) is very attractive offering high accuracy. Although SRC has good discriminative ability, its performance strongly depends on the quality of the training data. In particular, SRC...
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doaj-92daaa9d12b54bd48ac40d5a249b442f2021-03-29T20:32:14ZengIEEEIEEE Access2169-35362018-01-0163241324810.1109/ACCESS.2017.27876668244323Palmprint Identification Using an Ensemble of Sparse RepresentationsImad Rida0https://orcid.org/0000-0003-2789-5070Somaya Al-Maadeed1Arif Mahmood2https://orcid.org/0000-0001-5986-9876Ahmed Bouridane3Sambit Bakshi4https://orcid.org/0000-0002-6107-114XDepartment of Computer Science and Engineering, Qatar University, Doha, QatarDepartment of Computer Science and Engineering, Qatar University, Doha, QatarDepartment of Computer Science and Engineering, Qatar University, Doha, QatarDepartment of Computer Science and Digital Technologies, Northumbria University Newcastle, Newcastle upon Tyne, U.K.Department of Computer Science and Engineering, National Institute of Technology at Rourkela, Rourkela, IndiaAmong various palmprint identification methods proposed in the literature, sparse representation for classification (SRC) is very attractive offering high accuracy. Although SRC has good discriminative ability, its performance strongly depends on the quality of the training data. In particular, SRC suffers from two major problems: lack of training samples per class and large intra-class variations. In fact, palmprint images not only contain identity information but they also have other information, such as illumination and geometrical distortions due to the unconstrained conditions and the movement of the hand. In this case, the sparse representation assumption may not hold well in the original space since samples from different classes may be considered from the same class. This paper aims to enhance palmprint identification performance through SRC by proposing a simple yet efficient method based on an ensemble of sparse representations through an ensemble of discriminative dictionaries satisfying SRC assumption. The ensemble learning has the advantage to reduce the sensitivity due to the limited size of the training data and is performed based on random subspace sampling over 2D-PCA space while keeping the image inherent structure and information. In order to obtain discriminative dictionaries satisfying SRC assumption, a new space is learned by minimizing and maximizing the intra-class and inter-class variations using 2D-LDA. Extensive experiments are conducted on two publicly available palmprint data sets: multispectral and PolyU. Obtained results showed very promising results compared with both state-of-the-art holistic and coding methods. Besides these findings, we provide an empirical analysis of the parameters involved in the proposed technique to guide the neophyte.https://ieeexplore.ieee.org/document/8244323/Biometricspalmprintsparse representationensemble learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Imad Rida Somaya Al-Maadeed Arif Mahmood Ahmed Bouridane Sambit Bakshi |
spellingShingle |
Imad Rida Somaya Al-Maadeed Arif Mahmood Ahmed Bouridane Sambit Bakshi Palmprint Identification Using an Ensemble of Sparse Representations IEEE Access Biometrics palmprint sparse representation ensemble learning |
author_facet |
Imad Rida Somaya Al-Maadeed Arif Mahmood Ahmed Bouridane Sambit Bakshi |
author_sort |
Imad Rida |
title |
Palmprint Identification Using an Ensemble of Sparse Representations |
title_short |
Palmprint Identification Using an Ensemble of Sparse Representations |
title_full |
Palmprint Identification Using an Ensemble of Sparse Representations |
title_fullStr |
Palmprint Identification Using an Ensemble of Sparse Representations |
title_full_unstemmed |
Palmprint Identification Using an Ensemble of Sparse Representations |
title_sort |
palmprint identification using an ensemble of sparse representations |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2018-01-01 |
description |
Among various palmprint identification methods proposed in the literature, sparse representation for classification (SRC) is very attractive offering high accuracy. Although SRC has good discriminative ability, its performance strongly depends on the quality of the training data. In particular, SRC suffers from two major problems: lack of training samples per class and large intra-class variations. In fact, palmprint images not only contain identity information but they also have other information, such as illumination and geometrical distortions due to the unconstrained conditions and the movement of the hand. In this case, the sparse representation assumption may not hold well in the original space since samples from different classes may be considered from the same class. This paper aims to enhance palmprint identification performance through SRC by proposing a simple yet efficient method based on an ensemble of sparse representations through an ensemble of discriminative dictionaries satisfying SRC assumption. The ensemble learning has the advantage to reduce the sensitivity due to the limited size of the training data and is performed based on random subspace sampling over 2D-PCA space while keeping the image inherent structure and information. In order to obtain discriminative dictionaries satisfying SRC assumption, a new space is learned by minimizing and maximizing the intra-class and inter-class variations using 2D-LDA. Extensive experiments are conducted on two publicly available palmprint data sets: multispectral and PolyU. Obtained results showed very promising results compared with both state-of-the-art holistic and coding methods. Besides these findings, we provide an empirical analysis of the parameters involved in the proposed technique to guide the neophyte. |
topic |
Biometrics palmprint sparse representation ensemble learning |
url |
https://ieeexplore.ieee.org/document/8244323/ |
work_keys_str_mv |
AT imadrida palmprintidentificationusinganensembleofsparserepresentations AT somayaalmaadeed palmprintidentificationusinganensembleofsparserepresentations AT arifmahmood palmprintidentificationusinganensembleofsparserepresentations AT ahmedbouridane palmprintidentificationusinganensembleofsparserepresentations AT sambitbakshi palmprintidentificationusinganensembleofsparserepresentations |
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1724194695731478528 |