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Semi-supervised dimensionality reduction for hyperspectral remote sensing image classification

机译:高光谱遥感图像分类的半监督维度减少

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Class labels and pairwise constraints are adopted as the prior information to present the semi-supervised dimensionality reduction for hyperspectral image. In this paper, we extend semi-supervised probabilistic principal component analysis (S2PPCA), semi-supervised local fisher discriminant analysis (S2LFDA) and semi-supervised dimensionality reduction with pairwise constraints (S2DRpc) to extract the features of hyperspectral image. These semi-supervised dimensionality reduction approaches are compared with PCA in classification task. Experimental results show that semi-supervised algorithms of S2PPCA and S2DRpc are superior to PCA.
机译:类别标签和成对约束被采用作为现有信息,以提出高光谱图像的半监督维度减少。在本文中,我们扩展了半监督概率主成分分析(S2PPCA),半监督当地Fisher判别分析(S2LFDA)和半监督维度减少,并用成对约束(S2DRPC)来提取高光谱图像的特征。将这些半监督的维度减少方法与分类任务中的PCA进行比较。实验结果表明,S2PPCA和S2DRPC的半监督算法优于PCA。

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