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Fast holo-kronecker compressive sensing for hyperspectral image

机译:高光谱图像的快速holo-kronecker压缩感测

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Compressive sensing of hyperspectral image (HSI) faces the difficulties of complex computation and much information redundancies. In this paper, we propose a highly-efficient compressive sensing framework including sampling method and its corresponding reconstruction algorithm for HSI. Kronecker product is used to generate the sparsifying basis and measurement matrices. Both the data in spatial dimensions and spectral dimension are compressed, resulting an enhanced sampling efficiency. Very few measurements are needed for a successful reconstruction. We combine the sparsity model and low multilinear-rank model for fast and accurate reconstruction. Iterative algorithm is employed to reconstruct the data only in one dimension of HSI independently instead of all dimensions globally, which can speed up the reconstruction.
机译:高光谱图像(HSI)的压缩感测面临复杂计算和大量信息冗余的困难。在本文中,我们提出了一种高效的压缩感知框架,包括用于HSI的采样方法及其相应的重建算法。 Kronecker产品用于生成稀疏基础和测量矩阵。空间维度和光谱维度上的数据都经过压缩,从而提高了采样效率。成功重建所需的测量很少。我们将稀疏模型和低多线性秩模型结合在一起,以进行快速,准确的重建。采用迭代算法仅在HSI的一个维度上独立地重建数据,而不是在全局范围内独立地重建数据,这可以加快重建速度。

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