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Multi-layer Dictionary Learning for Image Classification

机译:图像分类的多层字典学习

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This paper presents a multi-layer dictionary learning method for classification tasks. The goal of the proposed multi-layer framework is to use the supervised dictionary learning approach locally on raw images in order to learn local features. This method starts by building a sparse representation at the patch-level and relies on a hierarchy of learned dictionaries to output a global sparse representation for the whole image. It relies on a succession of sparse coding and pooling steps in order to find an efficient representation of the data for classification. This method has been tested on a classification task with good results.
机译:本文提出了一种用于分类任务的多层字典学习方法。所提出的多层框架的目标是在原始图像上本地使用监督典学习方法,以便学习本地特征。此方法通过在修补程序级别构建稀疏表示并依赖于获取的学习词典的层次,以输出整个图像的全局稀疏表示。它依赖于稀疏编码和池步骤的连续,以便找到分类数据的有效表示。此方法已在具有良好结果的分类任务上进行测试。

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