DISCRIMINATIVE DICTIONARY PAIR LEARNING FOR IMAGE CLASSIFICATION

Nguyen Hoang Vu, T. Cuong, Tran Thanh Phong
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引用次数: 0

Abstract

Dictionary learning (DL) for sparse coding has been widely applied in the field of computer vision. Many DL approaches have been developed recently to solve pattern classification problems and have achieved promising performance. In this paper, to improve the discriminability of the popular dictionary pair learning (DPL) algorithm, we propose a new method called discriminative dictionary pair learning (DDPL) for image classification. To achieve the goal of signal representation and discrimination, we impose the incoherence constraints on the synthesis dictionary and the lowrank regularization on the analysis dictionary. The DDPL method ensures that the learned dictionary has a powerful discriminative ability and signals are more separable after coding. We evaluate the proposed method on benchmark image databases in comparison with existing DL methods. The experimental results demonstrate that our method outperforms many recently proposed dictionary learning approaches.
判别字典对学习用于图像分类
稀疏编码的字典学习在计算机视觉领域得到了广泛的应用。最近开发了许多深度学习方法来解决模式分类问题,并取得了良好的性能。为了提高目前流行的字典对学习(DPL)算法的可判别性,提出了一种判别字典对学习(DDPL)的图像分类方法。为了达到信号表示和识别的目的,我们对合成字典施加了非相干约束,对分析字典施加了低秩正则化。DDPL方法保证了学习到的字典具有强大的判别能力,使编码后的信号更易分离。我们在基准图像数据库上与现有的深度学习方法进行了比较。实验结果表明,我们的方法优于最近提出的许多字典学习方法。
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