location: Current position: Home >> Scientific Research >> Paper Publications

Class-Aware Analysis Dictionary Learning for Pattern Classification

Hits:

Indexed by:期刊论文

Date of Publication:2017-12-01

Journal:IEEE SIGNAL PROCESSING LETTERS

Included Journals:SCIE、EI、Scopus

Volume:24

Issue:12

Page Number:1822-1826

ISSN No.:1070-9908

Key Words:Analysis dictionary learning (ADL); max-margin

Abstract:Dictionary learning (DL) plays an important role in pattern classification. However, learning a discriminative dictionary has not been well addressed in analysis dictionary learning (ADL). This letter proposes a Class-aware Analysis Dictionary Learning (CADL) model to improve the classification performance of conventional ADL. The objective function of CADL mainly includes two parts to promote the discriminability. The first part aims to learn a discriminative analysis subdictionary for each class instead of a global dictionary for all classes. The learned analysis dictionary is class-aware, generating a block-diagonal coding coefficient matrix. The second part aims to enhance the discrimination of coding coefficients by integrating a max-margin regularization term into our proposed framework. This term ensures the coefficients of different classes to be separated by a max-margin, which boosts the confidence of classification. A theoretical analysis is also given to support the max-margin regularization term from the perspective of preserving the pairwise relations of samples in coding space. We employ an alternating minimization algorithm to iteratively find the convergent solution. By evaluating our method on four pattern classification datasets, we demonstrate the superiority of our CADL method to the state-of-the-art DL methods.

Pre One:Multi-view clustering via simultaneously learning shared subspace and affinity matrix

Next One:Saliency detection via local single Gaussian model