Dictionary learning (DL) for sparse coding based classification has been
widely researched in pattern recognition in recent years. Most of the
DL approaches focused on the reconstruction performance and the
discriminative capability of the learned dictionary. This paper proposes
a new method for learning discriminative dictionary for sparse
representation based classification, called Incoherent Fisher
Discrimination Dictionary Learning (IFDDL). IFDDL combines the Fisher
Discrimination Dictionary Learning (FDDL) method, which learns a
structured dictionary where the class labels and the discrimination
criterion are exploited, and the Incoherent Dictionary Learning (IDL)
method, which learns a dictionary where the mutual incoherence between
pairs of atoms is exploited. In the combination, instead of considering
the incoherence between atoms in a single shared dictionary as in IDL,
we propose to incorporate the incoherence between pairs of atoms within
each sub-dictionary, which represent a specific object class. This aims
to increase discrimination capacity between basic atoms in
sub-dictionaries. The combination allows one to exploit the advantages
of both methods and the discrimination capacity of the entire
dictionary. Extensive experiments have been conducted on benchmark image
data sets for Face recognition (ORL database, Extended Yale B database,
AR database) and Digit recognition (the USPS database). The
experimental results show that our proposed method outperforms most of
state-of-the-art methods for sparse coding and DL based classification,
meanwhile maintaining similar complexity
Title:
A new approach for learning discriminative dictionary for pattern classification | |
Authors: | N.T., Thuy H.T.T, Binh S.V., Dinh |
Keywords: | Dictionary learning Fisher criterion Object classification Pattern recognition Sparse coding |
Issue Date: | 2016 |
Publisher: | Institute of Information Science |
Citation: | Scopus |
Abstract: | Dictionary learning (DL) for sparse coding based classification has been widely researched in pattern recognition in recent years. Most of the DL approaches focused on the reconstruction performance and the discriminative capability of the learned dictionary. This paper proposes a new method for learning discriminative dictionary for sparse representation based classification, called Incoherent Fisher Discrimination Dictionary Learning (IFDDL). IFDDL combines the Fisher Discrimination Dictionary Learning (FDDL) method, which learns a structured dictionary where the class labels and the discrimination criterion are exploited, and the Incoherent Dictionary Learning (IDL) method, which learns a dictionary where the mutual incoherence between pairs of atoms is exploited. In the combination, instead of considering the incoherence between atoms in a single shared dictionary as in IDL, we propose to incorporate the incoherence between pairs of atoms within each sub-dictionary, which represent a specific object class. This aims to increase discrimination capacity between basic atoms in sub-dictionaries. The combination allows one to exploit the advantages of both methods and the discrimination capacity of the entire dictionary. Extensive experiments have been conducted on benchmark image data sets for Face recognition (ORL database, Extended Yale B database, AR database) and Digit recognition (the USPS database). The experimental results show that our proposed method outperforms most of state-of-the-art methods for sparse coding and DL based classification, meanwhile maintaining similar complexity |
Description: | Journal of Information Science and Engineering Volume 32, Issue 4, July 2016, Pages 1113-1127 |
URI: | http://repository.vnu.edu.vn/handle/VNU_123/29372 http://jise.iis.sinica.edu.tw/JISESearch/pages/View/PaperSearch.jsf?searchBy=TITLE&title=A+new+approach+for+learning+discriminative+dictionary+for+pattern+classification http://jise.iis.sinica.edu.tw/JISESearch/pages/View/PaperSearch.jsf?searchBy=TITLE&title=A+new+approach+for+learning+discriminative+dictionary+for+pattern+classification |
ISSN: | 10162364 |
Appears in Collections: | Bài báo của ĐHQGHN trong Scopus |
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