Overcomplete tomography: A novel approach to imaging

B. Turunçtur, A. Valentine, M. Sambridge
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Abstract

Regularised least-squares tomography offers a straightforward and efficient imaging method and has seen extensive application across various fields. However, it has a few drawbacks, such as (i) the regularisation imposed during the inversion tends to give a smooth solution, which will fail to reconstruct a multi-scale model well or detect sharp discontinuities, (ii) it requires finding optimum control parameters, (iii) it does not produce a sparse solution. This paper introduces ‘overcomplete tomography’, a novel imaging framework that allows high-resolution recovery with relatively few data points. We express our image in terms of an overcomplete basis, allowing the representation of a wide range of features and characteristics. Following the insight of ‘compressive sensing’, we regularise our inversion by imposing a penalty on the L1 norm of the recovered model, obtaining an image that is sparse relative to the overcomplete basis. We demonstrate our method with a synthetic and a real X-ray tomography example. Our experiments indicate that we can reconstruct a multi-scale model from only a few observations. The approach may also assist interpretation, allowing images to be decomposed into (for example) ‘global’ and ‘local’ structures. The framework presented here can find application across a wide range of fields, including engineering, medical and geophysical tomography.
过完全断层扫描:一种新的成像方法
正则化最小二乘层析成像提供了一种简单有效的成像方法,在各个领域得到了广泛的应用。然而,它有一些缺点,例如(i)在反演过程中施加的正则化倾向于给出平滑解,这将无法很好地重建多尺度模型或检测尖锐的不连续,(ii)它需要找到最优控制参数,(iii)它不产生稀疏解。本文介绍了“过完全断层扫描”,这是一种新的成像框架,可以用相对较少的数据点进行高分辨率恢复。我们用一个过完备的基础来表达我们的图像,允许广泛的特征和特征的表示。根据“压缩感知”的见解,我们通过对恢复模型的L1范数施加惩罚来规范我们的反演,获得相对于过完备基的稀疏图像。我们用一个合成的和真实的x射线断层成像例子来证明我们的方法。我们的实验表明,我们可以从很少的观测数据中重建一个多尺度模型。该方法还可以帮助解释,允许将图像分解为(例如)“全局”和“局部”结构。这里提出的框架可以在广泛的领域中找到应用,包括工程、医学和地球物理断层扫描。
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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