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Image Classification Based on Discriminative Dictionary Pair Learning

机译:基于判别字典对学习的图像分类

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Dictionary learning plays an increasingly important role in image classification in recent years. Most of existing dictionary learning methods aim to enhance discrimination of the learned dictionaries. Recently, learning a pair of dictionaries shows effectiveness and efficiency in image classification. Such a pair consists of a synthesis dictionary and a projective analysis dictionary. Different from traditional sparse representation, such a model enforces group sparsity based on structured representation of the pair of dictionaries, which consists with the objective of classification. In this paper, we propose to enhance the discrimination of coding coefficients to further improve the structure of the dictionary pair. More specifically, a regularization term on the coding coefficients is introduced to push pattern representations of the same class closer and those of different classes further away. At the classification stage, we use the learned dictionaries to improve image classification. The experimental results on several representative benchmark image databases demonstrate the effectiveness of the proposed method.
机译:近年来,字典学习在图像分类中起着越来越重要的作用。现有的大多数字典学习方法旨在增强对所学字典的辨别力。最近,学习一对词典显示了图像分类的有效性和效率。这样的对由合成字典和投影分析字典组成。与传统的稀疏表示不同,这种模型基于字典对的结构化表示来实现组稀疏性,这具有分类的目的。在本文中,我们提出增强编码系数的辨别力,以进一步改善字典对的结构。更具体地,引入关于编码系数的正则化项以将相同类别的模式表示推得更近而将不同类别的模式表示推得更远。在分类阶段,我们使用学到的字典来改进图像分类。在几个代表性基准图像数据库上的实验结果证明了该方法的有效性。

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