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DIMENSIONALITY REDUCTION OF HYPERSPECTRAL IMAGES BY COMBINATION OF NON-PARAMETRIC WEIGHTED FEATURE EXTRACTION (NWFE) AND MODIFIED NEIGHBORHOOD PRESERVING EMBEDDING (NPE)

机译:通过非参数加权特征提取(NWFE)组合和修改邻域保留嵌入(NPE)的二维光谱图像的维度降低

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This paper combine two conventional feature extraction methods (NWFE&NPE) in a novel framework and present a new semi-supervised feature extraction method called Adjusted Semi supervised Discriminant Analysis (ASEDA). The advantage of this method is dominating the Hughes phenomena, automatic selection of unlabelled pixels, extraction of more than L-1(L: number of classes) features and avoidance of singularity or near singularity of within-class scatter matrix. Experimental results on well-known hyperspectral dataset demonstrate that compared to conventional extraction algorithms the overall accuracy of the classification increased.
机译:本文将两种常规特征提取方法(NWFE&NPE)结合在一个新颖的框架中,并提出了一种称为调整后半监督判别分析(ASEDA)的新的半监督特征提取方法。这种方法的优点是占据休闲现象,自动选择未标记的像素,提取超过L-1(L:类别数量)特征,避免互相散射矩阵内的奇点或附近的奇异性。众所周知的高光谱数据集上的实验结果表明,与传统的提取算法相比,分类的整体精度增加。

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