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Hyperspectral classification using selected contourlet subbands

机译:使用所选Contourlet子带的高光谱分类

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The contourlet transform is a promising multiscale multidirection image representation technique emerging in recent years. Although it has been adopted in some signal and image processing areas, its application to hyperspectral image analysis has not been adequately studied. In this paper, we explore feature selection in the contourlet domain for hyperspectral classification. We apply a previously developed similarity-based unsupervised band selection approach to all contourlet subbands obtained from a nonsubsampled contourlet decomposition of each spectral image. We then utilize the selected contourlet subbands as features for supervised classification experiments. The results show that, using selected contourlet subbands outperforms using all contourlet subbands, all original spectral bands, selected spectral bands, or principal components. We also examine how the transform parameter selections may impact classification accuracy.
机译:Contourlet变换是近年来出现的有希望的多尺度多向图像表示技术。虽然它已在某些信号和图像处理区域采用,但其在高光谱图像分析中的应用尚未得到充分研究。在本文中,我们探讨了Contourlet域中的特征选择,用于高光谱分类。我们将先前开发的基于相似性的无监督频段选择方法应用于从每个光谱图像的非管制型Contoullet分解获得的所有Contourlet子带。然后,我们将所选的Contourlet子带作为用于监督分类实验的特征。结果表明,使用所选的Contourlet子带优于使用所有Contourlet子带,所有原始光谱频带,所选光谱频带或主组件。我们还检查转换参数选择如何影响分类准确性。

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