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Dimensionality Reduction of Hyperspectral Images Based on Robust Spatial Information Using Locally Linear Embedding

机译:基于鲁棒空间信息的局部线性嵌入高光谱图像降维

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In this letter, we propose an improved locally linear embedding (LLE) method based on robust spatial information (named RSLLE) for hyperspectral data dimensionality reduction. It explores and takes full account of the complexity of the spatial information for LLE. In RSLLE, when searching for spectral neighbors, a kind of spectral–spatial distance is used instead of the distance between two individual target pixels. Then, two additional steps, i.e., spatial neighbor sorting and spatial neighbor filtering, are presented to ensure the robustness of the spectral–spatial distance. Two classification experimental results indicate that the proposed RSLLE method significantly improves the performance when compared with other LLE methods, and the classification accuracy is competitive compared with other latest spectral–spatial classification methods.
机译:在这封信中,我们提出了一种基于鲁棒空间信息(称为RSLLE)的改进的局部线性嵌入(LLE)方法,用于降低高光谱数据的维数。它探索并充分考虑了LLE的空间信息的复杂性。在RSLLE中,当搜索光谱邻居时,将使用一种光谱空间距离代替两个单独目标像素之间的距离。然后,提出了两个附加步骤,即空间邻居分类和空间邻居过滤,以确保频谱空间距离的鲁棒性。两项分类实验结果表明,与其他LLE方法相比,所提出的RSLLE方法显着提高了性能,并且与其他最新的光谱空间分类方法相比,分类精度具有竞争力。

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