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Supervised Dictionary Learning Based on Relationship Between Edges and Levels

机译:基于边缘和层次之间关系的监督词典学习

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Categories of images are often arranged in a hierarchical structure based on their semantic meanings. Many existing approaches demonstrate the hierarchical category structure could bolster the learning process for classification, but most of them are designed based on a flat category structure, hence may not be appreciated for dealing with complex category structure and large numbers of categories. In this paper, given the hierarchical category structure, we propose to jointly learn a shared discriminative dictionary and corresponding level classifiers for visual categorization by making use of the relationship between the edges and the relationship between each layer. Specially, we use the graph-guided-fused-lasso penalty to embed the relationship between edges to the dictionary learning process. Besides, our approach not only learns the classifier towards the basic-class level, but also learns the classifier corresponding to the super-class level to embed the relationship between levels to the learning process. Experimental results on Caltech256 dataset and its subset show that the proposed approach yields promising performance improvements over some state-of-the-art methods.
机译:图像类别通常基于其语义含义以分层结构排列。许多现有方法证明了分层类别结构可以加强分类的学习过程,但是大多数方法是基于扁平类别结构设计的,因此对于处理复杂类别结构和大量类别可能不为所知。在本文中,给定分层类别结构,我们建议通过利用边缘之间的关系以及各层之间的关系,共同学习共享的区分词典和用于视觉分类的相应级别分类器。特别地,我们使用图引导融合套索惩罚将边之间的关系嵌入字典学习过程。此外,我们的方法不仅学习基本类的分类器,而且学习与超类级别相对应的分类器,将各个级别之间的关系嵌入到学习过程中。在Caltech256数据集及其子集上的实验结果表明,与某些最新方法相比,该方法可带来令人鼓舞的性能改进。

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