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首页> 外文期刊>Procedia Computer Science >Fast Spatial Spectral Schroedinger Eigenmaps algorithm for hyperspectral feature extraction
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Fast Spatial Spectral Schroedinger Eigenmaps algorithm for hyperspectral feature extraction

机译:用于高光谱特征提取的快速空间光谱Schroedinger特征图算法

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Based on the Laplacian Eigenmaps (LE) algorithm and a potential matrix, the Spatial Spectral Schroedinger Eigenmaps (SSSE) technique has proved a great yield during the hyperspectral dimensionality reduction process. Experimentally, SSSE is in deficiency of high computing time which may hinder its contribution in the remote sensing field. In this paper, a fast variant of the SSSE approach, called Fast SSSE, was proposed. The new suggested method substitutes the quadratic constraint employed during the optimization problem, by a linear constraint. This overhaul preserves the data properties in analogous way to the SSSE technique, but with a fast implementation. Two real hyperspectral data sets were adopted during the experimental process. Experiment analysis exhibited good classification accuracy with a reduced computational effort, compared with the original SSSE approach.
机译:基于拉普拉斯特征图(LE)算法和势矩阵,空间光谱薛定inger特征图(SSSE)技术在高光谱降维过程中被证明具有很高的产量。实验上,SSSE缺乏高计算时间,这可能会阻碍其在遥感领域的贡献。在本文中,提出了一种SSSE方法的快速变体,称为Fast SSSE。新提出的方法用线性约束代替了在优化问题中采用的二次约束。这项检修以类似于SSSE技术的方式保留了数据属性,但实现速度很快。在实验过程中采用了两个真实的高光谱数据集。与原始的SSSE方法相比,实验分析显示出良好的分类精度,并且减少了计算量。

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