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Feature Extraction Using Attraction Points for Classification of Hyperspectral Images in a Small Sample Size Situation

机译:小样本量情况下使用吸引力的特征提取对高光谱图像进行分类

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Hyperspectral images provide a large volume of spectral bands. Feature extraction (FE) is an important preprocessing step for classification of high-dimensional data. Supervised FE methods such as linear discriminant analysis, generalized discriminant analysis, and nonparametric weighted FE use the criteria of class separability. Theses methods maximize the between-class scatter matrix and minimize the within-class scatter matrix. We propose a supervised FE method in this letter, which uses no statistical moments. Thus, it works well using limited training samples. The proposed FE method consists of two important phases. In the first phase, an attraction point for each class is found. In the second phase, by using an appropriate transformation, the samples of each class move toward the attraction point of their class. The experimental results on two real hyperspectral images demonstrate that FE using attraction points has better performance in comparison with some other supervised FE methods in a small sample size situation.
机译:高光谱图像提供了大量的光谱带。特征提取(FE)是高维数据分类的重要预处理步骤。有监督的有限元分析方法,例如线性判别分析,广义判别分析和非参数加权有限元分析,使用类可分离性标准。这些方法使类间散布矩阵最大化,并使类内散布矩阵最小化。我们在这封信中提出了一种有监督的有限元方法,该方法不使用统计矩。因此,使用有限的训练样本可以很好地工作。所提出的有限元方法包括两个重要阶段。在第一阶段,找到每个班级的吸引力。在第二阶段,通过使用适当的变换,每个类别的样本都移向其类别的吸引点。在两个真实的高光谱图像上的实验结果表明,在小样本量情况下,使用吸引点的有限元分析与其他一些监督有限元分析方法相比具有更好的性能。

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