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Multi-Level Discriminative Dictionary Learning With Application to Large Scale Image Classification

机译:多级判别词典学习及其在大规模图像分类中的应用

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摘要

The sparse coding technique has shown flexibility and capability in image representation and analysis. It is a powerful tool in many visual applications. Some recent work has shown that incorporating the properties of task (such as discrimination for classification task) into dictionary learning is effective for improving the accuracy. However, the traditional supervised dictionary learning methods suffer from high computation complexity when dealing with large number of categories, making them less satisfactory in large scale applications. In this paper, we propose a novel multi-level discriminative dictionary learning method and apply it to large scale image classification. Our method takes advantage of hierarchical category correlation to encode multi-level discriminative information. Each internal node of the category hierarchy is associated with a discriminative dictionary and a classification model. The dictionaries at different layers are learnt to capture the information of different scales. Moreover, each node at lower layers also inherits the dictionary of its parent, so that the categories at lower layers can be described with multi-scale information. The learning of dictionaries and associated classification models is jointly conducted by minimizing an overall tree loss. The experimental results on challenging data sets demonstrate that our approach achieves excellent accuracy and competitive computation cost compared with other sparse coding methods for large scale image classification.
机译:稀疏编码技术在图像表示和分析中显示出灵活性和能力。它是许多视觉应用程序中的强大工具。最近的一些工作表明,将任务的属性(例如对分类任务的区分)合并到字典学习中可以有效地提高准确性。但是,传统的有监督词典学习方法在处理大量类别时会面临很高的计算复杂度,从而使其在大规模应用中不太令人满意。在本文中,我们提出了一种新颖的多级判别词典学习方法,并将其应用于大规模图像分类。我们的方法利用层次分类相关性来编码多级判别信息。类别层次结构的每个内部节点都与判别词典和分类模型相关联。学习不同层的词典以捕获不同规模的信息。此外,较低层的每个节点也继承其父级的字典,因此可以使用多尺度信息来描述较低层的类别。字典和相关分类模型的学习是通过使总体树损失最小化来共同进行的。在具有挑战性的数据集上的实验结果表明,与其他用于大规模图像分类的稀疏编码方法相比,我们的方法具有出色的准确性和具有竞争力的计算成本。

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