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Feature extraction for hyperspectral images based on semi-supervised local discriminant analysis

机译:基于半监督局部判别分析的高光谱图像特征提取

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We propose a novel semi-supervised local discriminant analysis (SELD) method for feature extraction in hypers-pectral remote sensing imagery. The proposed method combines a supervised method (Linear Discriminant Analysis (LDA)) and an unsupervised method (Neighborhood Preserving Embedding (NPE)) without any free parameters. The underlying idea is to design optimal projection vectors, which can discover the global discriminant structure of the available labeled samples while preserving the local neighborhood spatial structure of the unlabeled samples. Furthermore, in our approach the number of extracted feature bands is no longer limited by the number of classes, which is a disadvantage of LDA. Experimental results demonstrate that the proposed method outperforms consistently other related semi-supervised methods and that it is also much more stable when the percentage of the labeled samples changes
机译:我们提出了一种新颖的半监督局部判别分析(SELD)方法,用于超光谱遥感影像中的特征提取。所提出的方法结合了无监督参数的监督方法(线性判别分析(LDA))和无监督方法(邻居保留嵌入(NPE))。基本思想是设计最佳投影向量,该向量可以发现可用标记样本的全局判别结构,同时保留未标记样本的局部邻域空间结构。此外,在我们的方法中,提取的特征带的数量不再受类别数量的限制,这是LDA的缺点。实验结果表明,所提出的方法优于其他相关的半监督方法,并且当标记样品的百分比发生变化时,该方法也更加稳定。

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