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Multiscale Superpixel-Based Sparse Representation for Hyperspectral Image Classification

机译:基于多尺度超像素的稀疏表示用于高光谱图像分类

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Recently, superpixel segmentation has been proven to be a powerful tool for hyperspectral image (HSI) classification. Nonetheless, the selection of the optimal superpixel size is a nontrivial task. In addition, compared with single-scale superpixel segmentation, the same image segmented on a different scale can obtain different structure information. To overcome such a drawback also utilizing the structural information, a multiscale superpixel-based sparse representation (MSSR) algorithm for the HSI classification is proposed. Specifically, a modified segmentation strategy of multiscale superpixels is firstly applied on the HSI. Once the superpixels on different scales are obtained, the joint sparse representation classification is used to classify the multiscale superpixels. Furthermore, majority voting is utilized to fuse the labels of different scale superpixels and to obtain the final classification result. Two merits are realized by the MSSR. First, multiscale information fusion can more effectively explore the spatial information of HSI. Second, in the multiscale superpixel segmentation, except for the first scale, the superpixel number on a different scale for different HSI datasets can be adaptively changed based on the spatial complexity of the corresponding HSI. Experiments on four real HSI datasets demonstrate the qualitative and quantitative superiority of the proposed MSSR algorithm over several well-known classifiers.
机译:最近,超像素分割已被证明是用于高光谱图像(HSI)分类的强大工具。尽管如此,最佳超像素尺寸的选择并非易事。另外,与单尺度超像素分割相比,以不同尺度分割的同一图像可以获得不同的结构信息。为了克服也利用结构信息的这种缺点,提出了一种用于HSI分类的基于多尺度超像素的稀疏表示(MSSR)算法。具体地,首先在HSI上应用改进的多尺度超像素分割策略。一旦获得了不同比例的超像素,就将联合稀疏表示分类用于对多比例超像素进行分类。此外,多数表决被用来融合不同比例的超像素的标签并获得最终的分类结果。 MSSR实现了两个优点。首先,多尺度信息融合可以更有效地探索HSI的空间信息。其次,在多尺度超像素分割中,除了第一尺度外,可以基于相应HSI的空间复杂度来自适应地更改不同HSI数据集在不同尺度上的超像素数量。在四个真实的HSI数据集上进行的实验证明了所提出的MSSR算法在几个知名分类器上的定性和定量优势。

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