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Superpixel-based classification of hyperspectral data using sparse representation and conditional random fields

机译:使用稀疏表示和条件随机场的基于超像素的高光谱数据分类

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This paper presents a superpixel-based classifier for landcover mapping of hyperspectral image data. The approach relies on the sparse representation of each pixel by a weighted linear combination of the training data. Spatial information is incorporated by using a coarse patch-based neighborhood around each pixel as well as data-adapted superpixels. The classification is done via a hierarchical conditional random field, which utilizes the sparse-representation output and models spatial and hierarchical structures in the hyperspectral image. The experiments show that the proposed approach results in superior accuracies in comparison to sparse-representation based classifiers that solely use a patch-based neighborhood.
机译:本文提出了一种基于超像素的分类器,用于高光谱图像数据的土地覆盖映射。该方法依靠训练数据的加权线性组合来稀疏表示每个像素。通过在每个像素以及数据自适应的超像素周围使用基于粗略补丁的邻域来合并空间信息。通过分层的条件随机字段进行分类,该条件随机字段利用稀疏表示输出并在高光谱图像中对空间和分层结构进行建模。实验表明,与仅使用基于补丁的邻域的基于稀疏表示的分类器相比,所提出的方法具有更高的准确性。

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