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Convex recovery of continuous domain piecewise constant images from nonuniform Fourier samples

机译:从非均匀傅里叶样本中连续域分段恒定图像的凸恢复

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摘要

We consider the recovery of a continuous domain piecewise constant image from its non-uniform Fourier samples using a convex matrix completion algorithm. We assume the discontinuities/edges of the image are localized to the zero level-set of a bandlimited function. This assumption induces linear dependencies between the Fourier coefficients of the image, which results in a two-fold block Toeplitz matrix constructed from the Fourier coefficients being low-rank. The proposed algorithm reformulates the recovery of the unknown Fourier coefficients as a structured low-rank matrix completion problem, where the nuclear norm of the matrix is minimized subject to structure and data constraints. We show that exact recovery is possible with high probability when the edge set of the image satisfies an incoherency property. We also show that the incoherency property is dependent on the geometry of the edge set curve, implying higher sampling burden for smaller curves. This paper generalizes recent work on the super-resolution recovery of isolated Diracs or signals with finite rate of innovation to the recovery of piecewise constant images.
机译:我们考虑使用凸矩阵完成算法从其非均匀傅立叶样本中恢复连续域分段恒定图像。我们假设图像的不连续性/边缘位于带限函数的零水平集。该假设引起图像的傅立叶系数之间的线性相关性,这导致由傅立叶系数构成的二级块托普利兹矩阵是低秩的。提出的算法将未知傅立叶系数的恢复重新构造为结构化的低秩矩阵完成问题,其中矩阵的核范数受结构和数据约束的影响最小。我们表明,当图像的边缘集满足不相干性时,准确恢复的可能性很高。我们还表明,不相干性取决于边缘设置曲线的几何形状,这意味着较小曲线的采样负担较高。本文概括了最近的工作,即具有有限创新速度的孤立狄拉克或信号的超分辨率恢复,以恢复分段恒定图像。

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