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Sparse Representation Based Fisher Discrimination Dictionary Learning for Image Classification

机译:基于稀疏表示的Fisher判别词典学习用于图像分类

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摘要

The employed dictionary plays an important role in sparse representation or sparse coding based image reconstruction and classification, while learning dictionaries from the training data has led to state-of-the-art results in image classification tasks.However,many dictionary learning models exploit only the discriminative information in either the representation coefficients or the representation residual, which limits their performance. In this paper we present a novel dictionary learning method based on the Fisher discrimination criterion. A structured dictionary, whose atoms have correspondences to the subject class labels, is learned, with which not only the representation residual can be used to distinguish different classes, but also the representation coefficients have small within-class scatter and big betweenclass scatter. The classification scheme associated with the proposed Fisher discrimination dictionary learning (FDDL) model is consequently presented by exploiting the discriminative information in both the representation residual and the representation coefficients. The proposed FDDL model is extensively evaluated on various image datasets, and it shows superior performance to many state-of-the-art dictionary learning methods in a variety of classification tasks.
机译:所使用的词典在稀疏表示或基于稀疏编码的图像重建和分类中起着重要作用,而从训练数据中学习词典已导致图像分类任务的最新成果。但是,许多词典学习模型仅利用表示系数或表示残差中的区分性信息限制了它们的性能。在本文中,我们提出了一种基于Fisher判别准则的新颖词典学习方法。学会了一个结构化的字典,其原子与主题类别标签具有对应关系,不仅可以使用表示残差来区分不同的类别,而且表示系数具有较小的类别内散布和较大的类别间散布。因此,通过利用表示残差和表示系数中的判别信息,提出了与提出的Fisher判别词典学习(FDDL)模型相关的分类方案。所提出的FDDL模型在各种图像数据集上得到了广泛的评估,并且在各种分类任务中显示出优于许多最新词典学习方法的优越性能。

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