论文标题

多维成像中卷积逆问题的有效算法

Efficient Algorithms for Convolutional Inverse Problems in Multidimensional Imaging

论文作者

Dogan, Didem, Oktem, Figen S.

论文摘要

多维成像,在超过两个维度上捕获图像数据一直是具有不同应用的新兴领域。由于二维探测器在获得高维图像数据中的局限性,已经开发出计算成像方法将某些负担传递给重建算法。在多维成像中的各种图像重建问题中,测量值是叠加卷积的形式。在本文中,我们介绍了解决这些问题的通用框架,称为此处卷积的反问题,并通过分析和合成先验开发快速图像重建算法。这些包括稀疏的变换,以及可以适应不同维度相关性的卷积或基于斑块的词典。通过封闭形式,高效和可行的更新步骤的乘数交替方向方法解决了最终的优化问题。为了说明它们的效用和多功能性,针对沿着第三维有或没有相关性的病例,将开发的算法应用于计算光谱成像中的三维图像重建问题。随着多维成像模式的出现扩展到执行复杂的任务,这些算法对于各种大规模问题的快速迭代重建至关重要。

Multidimensional imaging, capturing image data in more than two dimensions, has been an emerging field with diverse applications. Due to the limitation of two-dimensional detectors in obtaining the high-dimensional image data, computational imaging approaches have been developed to pass on some of the burden to a reconstruction algorithm. In various image reconstruction problems in multidimensional imaging, the measurements are in the form of superimposed convolutions. In this paper, we introduce a general framework for the solution of these problems, called here convolutional inverse problems, and develop fast image reconstruction algorithms with analysis and synthesis priors. These include sparsifying transforms, as well as convolutional or patch-based dictionaries that can adapt to correlations in different dimensions. The resulting optimization problems are solved via alternating direction method of multipliers with closed-form, efficient, and parallelizable update steps. To illustrate their utility and versatility, the developed algorithms are applied to three-dimensional image reconstruction problems in computational spectral imaging for cases with or without correlation along the third dimension. As the advent of multidimensional imaging modalities expands to perform sophisticated tasks, these algorithms are essential for fast iterative reconstruction in various large-scale problems.

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