Unsupervised feature extraction for hyperspectral images using combined low rank representation and locally linear embedding

Mengdi Wang, Jing Yu, Lijuan Niu, Weidong Sun
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引用次数: 8

Abstract

Hyperspectral images(HSIs) provide hundreds of narrow spectral bands for the land-covers, thus can provide more powerful discriminative information for the land-cover classification. However, HSIs suffer from the curse of high dimensionality, therefore dimension reduction and feature extraction are essential for the application of HSIs. In this paper, we propose an unsupervised feature extraction method for HSIs using combined low rank representation and locally linear embedding (LRR LLE). The proposed method can simultaneously use both the spectral and spatial correlation within HSIs, with LRR modelling the intrinsic property of union of low-rank subspaces and LLE considering the correlation within spatial neighbours. Experiments are conducted on real HSI datasets and the classification results demonstrate that the features extracted by LRR LLE are more discriminative than the state-of-art methods.
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结合低秩表示和局部线性嵌入的高光谱图像无监督特征提取
高光谱影像(hsi)为地表覆盖提供了数百个狭窄的光谱波段,可以为地表覆盖分类提供更有力的判别信息。然而,hsi具有高维的缺点,因此降维和特征提取是hsi应用的关键。本文提出了一种结合低秩表示和局部线性嵌入(LRR LLE)的hsi无监督特征提取方法。该方法可以同时利用hsi内部的频谱和空间相关性,其中LRR建模了低秩子空间并的固有特性,LLE考虑了空间邻居内部的相关性。在真实的HSI数据集上进行了实验,分类结果表明,LRR - LLE提取的特征比现有方法具有更好的判别性。
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