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Noise Removal From Hyperspectral Images by Multidimensional Filtering

机译:多维滤波去除高光谱图像中的噪声

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A generalized multidimensional Wiener filter for denoising is adapted to hyperspectral images (HSIs). Commonly, multidimensional data filtering is based on data vectorization or matricization. Few new approaches have been proposed to deal with multidimensional data. Multidimensional Wiener filtering (MWF) is one of these techniques. It considers a multidimensional data set as a third-order tensor. It also relies on the separability between a signal subspace and a noise subspace. Using multilinear algebra, MWF needs to flatten the tensor. However, flattening is always orthogonally performed, which may not be adapted to data. In fact, as a Tucker-based filtering, MWF only considers the useful signal subspace. When the signal subspace and the noise subspace are very close, it is difficult to extract all the useful information. This may lead to artifacts and loss of spatial resolution in the restored HSI. Our proposed method estimates the relevant directions of tensor flattening that may not be parallel either to rows or columns. When rearranging data so that flattening can be performed in the estimated directions, the signal subspace dimension is reduced, and the signal-to-noise ratio is improved. We adapt the bidimensional straight-line detection algorithm that estimates the HSI main directions, which are used to flatten the HSI tensor. We also generalize the quadtree partitioning to tensors in order to adapt the filtering to the image discontinuities. Comparative studies with MWF, wavelet thresholding, and channel-by-channel Wiener filtering show that our algorithm provides better performance while restoring impaired HYDICE HSIs.
机译:用于降噪的通用多维维纳滤波器适用于高光谱图像(HSI)。通常,多维数据过滤基于数据矢量化或矩阵化。很少有人提出处理多维数据的新方法。多维维纳滤波(MWF)是这些技术之一。它将多维数据集视为三阶张量。它还依赖于信号子空间和噪声子空间之间的可分离性。使用多线性代数,MWF需要展平张量。但是,展平总是正交执行,可能不适用于数据。实际上,作为基于Tucker的过滤,MWF仅考虑有用的信号子空间。当信号子空间和噪声子空间非常接近时,很难提取所有有用的信息。这可能会导致伪像和恢复的HSI中空间分辨率的损失。我们提出的方法估计张量平坦化的相关方向,该方向可能与行或列都不平行。当重新排列数据以便可以在估计的方向上进行展平时,信号子空间尺寸会减小,信噪比也会提高。我们采用了可估计HSI主方向的二维直线检测算法,该算法用于拉平HSI张量。我们也将四叉树划分概括为张量,以使滤波适应图像不连续性。与MWF,小波阈值和逐通道维纳滤波的比较研究表明,我们的算法在恢复受损的HYDICE HSI的同时提供了更好的性能。

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