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Phase correlation based hyperspectral image classification using different number of multiple class representatives

机译:使用不同数量的多类代表的基于相位相关的高光谱图像分类

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In this paper, a phase correlation based supervised classification method for hyperspectral data is proposed. The spectral data of each pixel is initially sub-sampled to increase robustness against noise and spatial variability. Class representatives are extracted using phase correlation based k-means clustering for each class. Phase correlation is used as distance measure in k-means clustering to determine the spectral similarity between each pixel and cluster means. The number of representatives for each class is chosen considering the number of training samples in each class. Classification is performed for each pixel according to the maximum value of phase correlation obtained between samples and the class representatives.
机译:提出了一种基于相位相关的高光谱数据监督分类方法。最初对每个像素的光谱数据进行二次采样,以提高抗噪性和空间可变性的鲁棒性。使用基于相位相关的k均值聚类为每个类别提取类别代表。相位相关在k均值聚类中用作距离度量,以确定每个像素与聚类平均值之间的光谱相似性。选择每个班级的代表人数时要考虑每个班级的训练样本数量。根据样本和类别代表之间获得的相位相关最大值,对每个像素进行分类。

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