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Hierarchical sparse representation for dictionary-based classification of hyperspectral images

机译:基于词典的字典的分类分层稀疏表示

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The recent advances in sparse coding and dictionary learning have shown extremely good performances and robustness in high-dimensional classification problems. Most often, dictionary-based methods rely either on the reconstruction power of the dictionary or on the structure of the sparse representation. In this paper we jointly exploit the discrimination power of both approaches by combining the reconstruction error with the hierarchical information of the sparse codes collected during the learning stage. The proposed method performs similarly to state-of-the-art classifiers and outperforms them sharply in small sample situations, where the number of patterns used to learn the dictionaries is much smaller than the number of dimensions.
机译:最近稀疏编码和字典学习的进步已经表现出极良好的性能和高维分类问题的鲁棒性。最常见的是,基于字典的方法依赖于字典的重建电源或稀疏表示的结构。在本文中,我们通过将重建误差与学习阶段期间收集的稀疏代码的分层信息相结合,共同利用两种方法的辨别力。所提出的方法与最先进的分类器类似地执行,并且在小型样本情况下急剧地胜过它们,其中用于学习词典的模式数远小于尺寸的数量。

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