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Hyperspectral Super-Resolution: Exact Recovery In Polynomial Time

机译:高光谱超分辨率:多项式时间内的精确恢复

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In hyperspectral remote sensing, the hyperspectral super-resolution (HSR) problem has recently received growing interest. Simply speaking, the problem is to recover a super-resolution image-which has high spectral and spatial resolutions-from some lower spectral and spatial resolution measurements. Many of the current HSR studies consider matrix factorization formulations, with an emphasis on algorithms and performance in practice. On the other hand, the question of whether a factorization model is equipped with provable recovery guarantees of the true super-resolution image is much less explored. In this paper we show that unique and exact recovery of the super-resolution image is not only possible, it can also be done in polynomial time. We employ the matrix factorization model commonly used in the context of hyperspectral unmixing, and show that if certain local sparsity conditions are satisfied then the matrix factors constituting the true super-resolution image can be recovered by a simple two-step procedure.
机译:在高光谱遥感中,高光谱超分辨率(HSR)问题近来受到越来越多的关注。简而言之,问题是要从一些较低的光谱和空间分辨率测量结果中恢复具有高光谱和空间分辨率的超分辨率图像。当前的许多HSR研究都考虑矩阵分解公式化,着重实践中的算法和性能。另一方面,关于因式分解模型是否配备有可证明的真实超分辨率图像的恢复保证的问题则很少探讨。在本文中,我们证明了超分辨率图像的独特而精确的恢复不仅是可能的,而且还可以在多项式时间内完成。我们采用了在高光谱解混情况下常用的矩阵分解模型,并表明,如果满足某些局部稀疏条件,则可以通过简单的两步过程恢复构成真正超分辨率图像的矩阵因子。

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