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Blind filter identification and image superresolution using subspace methods

机译:使用子空间方法的盲滤波器识别和图像超分辨率

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Subspace methods are a powerful tool to recover unknown filters by looking at the second order statistics of various signals originating from the same source (also called a SIMO problem). An extension to the multiple source case is also possible and has been investigated in the literature. In this paper we show how the blind superresolution problem can be solved by this tool. We first present the problem of superresolution as a multiple input multiple output (MIMO) one. We show that the subspace method can not be used, as is, to recover the filters affecting each image, and we present two possible solutions, based on the statistical characteristics of the images to solve this problem. Experiments are shown which validate these ideas.
机译:子空间方法是一种强大的工具,可以通过查看来自同一源的各种信号的二阶统计信息来恢复未知滤波器(也称为SIMO问题)。扩展到多源案例也是可能的,并且已经在文献中进行了研究。在本文中,我们展示了如何使用此工具解决盲目超分辨率问题。我们首先提出超分辨率问题,即多输入多输出(MIMO)。我们证明了不能使用子空间方法来恢复影响每个图像的滤波器,并且基于图像的统计特性,我们提出了两种可能的解决方案来解决此问题。显示了可以验证这些想法的实验。

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