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A nonlinear and explicit framework of supervised manifold-feature extraction for hyperspectral image classification

机译:监督流形特征提取的非线性显式框架用于高光谱图像分类

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Hyperspectral remote sensing has drawn great research interests in earth observation, since massive and contiguous spectrum can provide rich information of ground objects. However, such numerous bands also pose great challenges to efficient processing of hyperspectral images (HSI). Manifold learning has been widely used in feature extraction of HSI data to find intrinsic and compact representations of original spectrum. Nevertheless, lack of explicit and nonlinear mapping is still a critical limitation. In this paper, we propose a supervised learning framework for manifold-learning based HSI feature extraction and classification, which provides a nonlinear and explicit mapping for fast and efficient feature learning. We also introduce two concrete learning methods that are induced from this framework, which can extract different intrinsic topology of HSI data to achieve nonlinear dimensionality reduction. Experiments conducted on benchmark data sets demonstrate that high classification accuracy can be obtained with the proposed framework, which consistently outperforms linear mappings for manifold learning methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:高光谱遥感在地球观测中引起了极大的研究兴趣,因为大量且连续的光谱可以提供丰富的地面物体信息。然而,如此众多的频带也对高效处理高光谱图像(HSI)提出了巨大挑战。流形学习已广泛用于HSI数据的特征提取中,以找到原始频谱的内在和紧凑表示形式。尽管如此,缺少显式和非线性映射仍然是一个关键限制。在本文中,我们为基于流形学习的HSI特征提取和分类提出了一种监督学习框架,该框架为快速高效的特征学习提供了非线性和显式的映射。我们还介绍了从该框架中引入的两种具体的学习方法,它们可以提取HSI数据的不同固有拓扑,以实现非线性降维。在基准数据集上进行的实验表明,使用提出的框架可以实现较高的分类精度,该框架始终优于流形学习方法的线性映射。 (C)2019 Elsevier B.V.保留所有权利。

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