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Statistics enhancement in hyperspectral data analysis using spectral-spatial labeling the EM algorithm and the leave-one-out covariance estimator

机译:使用光谱空间标记EM算法和留一法协方差估计器的高光谱数据分析中的统计增强

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Abstract: Hyperspectral data potentially contain more information than multispectral data because of higher dimensionality. Information extraction algorithm performance is strongly related to the quantitative precision with which the desired classes are defined, a characteristic which increase rapidly with dimensionality. Due to the limited number of training samples used in defining classes, the information extraction of hyperspectral data may not perform as well as needed. In this paper, schemes for statistics enhancement are investigated for alleviating this problem. Previous works including the EM algorithm and the Leave-One-Out covariance estimator are discussed. The HALF covariance estimator is proposed for two-class problems by using the symmetry property of the normal distribution. A spectral-spatial labeling scheme is proposed to increase the training sample sizes automatically. We also seek to combine previous works with the proposed methods so as to take full advantage of statistics enhancement. Using these techniques, improvement in classification accuracy has been observed. !9
机译:摘要:由于更高的维数,高光谱数据可能比多光谱数据包含更多的信息。信息提取算法的性能与定义所需类别的定量精度密切相关,该精度随维数而迅速增加。由于用于定义类的训练样本数量有限,因此高光谱数据的信息提取可能无法达到所需的效果。在本文中,研究了用于减轻该问题的统计增强方案。讨论了包括EM算法和“留一法”协方差估计器在内的先前工作。利用正态分布的对称性,针对两类问题提出了HALF协方差估计器。提出了一种频谱空间标记方案来自动增加训练样本的大小。我们还试图将以前的工作与提出的方法结合起来,以充分利用统计信息的增强。使用这些技术,已经观察到分类精度的提高。 !9

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