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Spatially regularized semisupervised Ensembles of Extreme Learning Machines for hyperspectral image segmentation

机译:用于高光谱图像分割的极限学习机的空间正则化半监督集成

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This paper explores the performance of Ensembles of Extreme Learning Machine classifiers for hyperspectral image classification and segmentation in a semisupervised and spatially regularized process. The approach assumes that we have available only a small training set of labeled samples, which we enrich with a set of guessed labelings on selected samples from the vast pool of unlabeled image pixels. Selection and label guessing is conditioned to an unsupervised classification of the image pixel spectra, and to the spatial proximity to the labeled samples in the image domain. Unlabeled pixels falling in the spatial neighborhood of a labeled training sample, and belonging to the same unsupervised class, acquire its label. Unsupervised classification can be performed by any clustering technique, in this paper we have resorted to the classical K-means. The classifier built from the enriched training dataset is applied to the entire hyperspectral image. Finally, we perform a spatial regularization of the classification label image, maximizing a rather general prior smoothness criterion, by the selection of the most frequent class in each pixel neighborhood. This paper reports experiments with homogeneous ensembles of ELM, rELM, and OP-ELM classifiers, including a sensitivity analysis over the ensemble size and the number of hidden nodes. Computational experiments on four well known benchmarking hyperspectral images give state-of-the-art results.
机译:本文探讨了在半监督和空间正则化过程中用于高光谱图像分类和分割的极限学习机分类器集合的性能。该方法假定我们仅提供了一小套带标签的样本训练集,并利用来自大量未标记图像像素池中所选样本上的一组猜想标签来丰富这些训练集。选择和标签猜测取决于图像像素光谱的无监督分类,以及与图像域中与标记样本的空间接近性。落入已标记训练样本的空间邻域中并属于同一非监督类的未标记像素将获取其标记。无监督分类可以通过任何聚类技术来执行,在本文中,我们采用了经典的K均值。根据丰富的训练数据集构建的分类器将应用于整个高光谱图像。最后,我们通过选择每个像素邻域中最频繁的类别,对分类标签图像进行空间正则化,从而最大化一个相当一般的先验平滑度标准。本文报告了使用ELM,rELM和OP-ELM分类器的均匀合奏进行的实验,包括对合奏大小和隐藏节点数的敏感性分析。在四个众所周知的基准高光谱图像上进行的计算实验给出了最新的结果。

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