Tomographic Reconstruction Using Global Statistical Priors

Preeti Gopal, Ritwick Chaudhry, S. Chandran, I. Svalbe, Ajit V. Rajwade
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引用次数: 2

Abstract

Recent research in tomographic reconstruction is motivated by the need to efficiently recover detailed anatomy from limited measurements. One of the ways to compensate for the increasingly sparse sets of measurements is to exploit the information from \emph{templates}, i.e., prior data available in the form of already reconstructed, structurally similar images. Towards this, previous work has exploited using a set of global and patch based dictionary priors. In this paper, we propose a global prior to improve both the speed and quality of tomographic reconstruction within a Compressive Sensing framework. We choose a set of potential representative 2D images referred to as templates, to build an eigenspace; this is subsequently used to guide the iterative reconstruction of a similar slice from sparse acquisition data. Our experiments across a diverse range of datasets show that reconstruction using an appropriate global prior, apart from being faster, gives a much lower reconstruction error when compared to the state of the art.
基于全局统计先验的层析重建
最近研究层析重建的动机是需要从有限的测量有效地恢复详细的解剖结构。补偿越来越稀疏的测量集的方法之一是利用\emph{模板}中的信息,即以已经重构的、结构相似的图像的形式提供的先前数据。为此,以前的工作利用了一组全局和基于补丁的字典先验。在本文中,我们提出了一个全局先验,以提高压缩感知框架下层析成像重建的速度和质量。我们选择一组潜在的代表性二维图像作为模板来构建特征空间;这随后用于指导从稀疏采集数据中迭代重建相似切片。我们在各种数据集上的实验表明,使用适当的全局先验进行重建,除了更快之外,与最先进的状态相比,重建误差要低得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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