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Feature Extraction of Hyperspectral Images With Semi-supervised Sparse Graph Learning

机译:半监督稀疏图学习的高光谱图像特征提取

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We propose a semisupervised sparse graph learning (SSGL) method for feature extraction of hyperspectral remote sensing imagery in this paper. The proposed SSGL method aims to build a semisupervised sparse graph that can maximize the class discrimination and preserve the local neighborhood information by combining labeled and unlabeled samples. In our semisupervised sparse graph, we connect labeled samples according to their label information and sparse representation, connect unlabeled samples by sparse representation which set unlabeled training samples set as dictionary. Moreover, by setting sparse connections between labeled sample and unlabeled samples, the label information can be well propagated from labeled samples to unlabeled samples. In this way, the similarity of data points can be well modelled in the spectral feature space, and the data distribution characteristics can be better expressed. Experimental results on real hyperspectral images (HSIs) demonstrate the advantages of our method compared to some related feature extraction methods.
机译:本文提出了一种用于高光谱遥感影像特征提取的半监督稀疏图学习(SSGL)方法。提出的SSGL方法旨在构建一个半监督的稀疏图,该图可以通过组合标记和未标记的样本来最大程度地区分类别并保留局部邻域信息。在我们的半监督稀疏图中,我们根据标签信息和稀疏表示来连接标记的样本,通过稀疏表示将未标记的样本连接起来,从而将未标记的训练样本设置为字典。此外,通过在标记的样本和未标记的样本之间设置稀疏连接,可以将标记信息从标记的样本很好地传播到未标记的样本。这样,可以在光谱特征空间中很好地建模数据点的相似性,并且可以更好地表达数据分布特性。实际高光谱图像(HSI)上的实验结果证明,与某些相关的特征提取方法相比,我们的方法具有优势。

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