Sparse representations for limited data tomography

H. Liao, G. Sapiro
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引用次数: 64

Abstract

In limited data tomography, with applications such as electron microscopy and medical imaging, the scanning views are within an angular range that is often both limited and sparsely sampled. In these situations, standard algorithms produce reconstructions with notorious artifacts. We show in this paper that a sparsity image representation principle, based on learning dictionaries for sparse representations of image patches, leads to significantly improved reconstructions of the unknown density from its limited angle projections. The presentation of the underlying framework is complemented with illustrative results on artificial and real data.
有限数据断层扫描的稀疏表示
在有限的数据断层扫描中,如电子显微镜和医学成像的应用,扫描视图在一个角度范围内,通常是有限的和稀疏采样的。在这些情况下,标准算法产生带有臭名昭著的伪影的重建。我们在本文中表明,基于学习字典的图像块稀疏表示的稀疏图像表示原理,可以显着改善从其有限角度投影的未知密度的重建。对基本框架的介绍与人工和真实数据的说明性结果相辅相成。
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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