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ESTIMATION OF JV-MODE RANKS OF HYPERSPECTRAL IMAGES FOR TENSOR DENOISING

机译:张力去噪的高光谱图像JV模式级别的估计

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This paper deals with w-mode subspaces in tensor based de-noising. Actually, the main issue of tensor signal processing is the estimation of n-mode ranks since a subspace based approach is considered. In hyperspectral images, an efficient denoising method could allow more accurate results for classification or unmixing. In this paper, we propose to extend subspace identification methods to tensors for n-mode rank estimation. The estimation of endmembers in hyperspectral images is equivalent to estimate the 3-mode rank of a tensor. HySime and Neyman-Pearson detection theory-based thresholding method (HFC) are practical benchmarks. Therefore, we adopt tensor formalism to extend reference algorithms to determine n-mode ranks of tensors. We compare different adapted criteria both on simulated and real data.
机译:本文涉及基于张力的张力的W模式子空间。实际上,张量信号处理的主要问题是因为考虑了基于子空间的方法,因此估计n模式等级。在高光谱图像中,有效的去噪方法可以允许更准确的分类或解密的结果。在本文中,我们建议将子空间识别方法延长到N模式秩估计的张量。高光谱图像中的终端中的估计相当于估计张量的3模式等级。 Hysime和Neyman-Pearson检测理论基于阈值化方法(HFC)是实用的基准。因此,我们采用张量形式主义扩展参考算法以确定张量的N模式等级。我们在模拟和实际数据上比较不同的调整标准。

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