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Hyperspectral image classification using One Dimensional Manifold Embedding with Spectral-Spatial based affinity metric

机译:高光谱图像分类使用一维歧管嵌入基于光谱 - 空间的亲和度量

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In this paper, a novel classification paradigm, termed Spectral-Spatial One Dimensional Manifold Embedding (SS1DME), is proposed for classification of hyperspectral imagery (HSI). The proposed paradigm integrates the spectral affinity and spatial information into a uniform metric framework. In SS1DME, a spectral-spatial affinity metric is utilized to learn the similarity of HSI pixels. Moreover, a pixel sorted based classification scheme, called 1-Dimensional Manifold Embedding (1DME), which is an extension of smooth ordering, is introduced for objective classification. Four main steps are involved in SS1DME. First, for a high dimensional data set, the proposed paradigm employed the spectral-spatial affinity metric to calculate pixelwise affinity. Next, we embed the whole data set into multiple 1-dimensional manifolds so that connected points have the shortest distance. Then, using the spinning average technique and self-learning scheme, a feasible confident set is constructed from the unlabeled set, where data points in feasible confident set are added to the labeled set in proportion. Finally, we use the extended labeled set to learn the interpolated function, which will lead to classification of unlabeled points. This approach is experimentally superior to some traditional alternatives in terms of classification performance indicators.
机译:本文提出了一种新的分类范例,称为光谱空间一维歧管嵌入(SS1DME),用于分类超光图象(HSI)。所提出的范例将光谱亲和力和空间信息集成到统一的公制框架中。在SS1DME中,利用光谱 - 空间亲和度量来学习HSI像素的相似性。此外,引入了一种基于像素的分类方案,称为1维歧管嵌入(1DME),其是平滑排序的延伸,用于客观分类。 SS1DME涉及四个主要步骤。首先,对于高维数据集,所提出的范例采用光谱空间关联度量来计算PixelWive亲和力。接下来,我们将整个数据设置为多个1维歧管,以便连接点具有最短的距离。然后,使用旋转平均技术和自学习方案,从未标记的集合构建一个可行的自主学习集,其中可行自信集中的数据点以比例的标记集添加到标记集中。最后,我们使用扩展标签集来学习内插功能,这将导致未标记点的分类。在分类绩效指标方面,这种方法在实验上优于一些传统替代品。

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