A spline-based forward model for Optical Diffuse Tomography

Jean-Charles Baritaux, C. Seelamantula, M. Unser
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引用次数: 8

Abstract

Reconstruction algorithms for Optical Diffuse Tomography (ODT) rely heavily on fast and accurate forward models. Arbitrary geometries and boundary conditions need to be handled rigorously since they are the only input to the inverse problem. From this perspective, Finite Element Methods (FEM) are good candidates to implement a forward model. However, these methods require to mesh the domain of interest, which is impractical on a routine basis. The other downside of the FEM is that the basis functions are often not compatible with the ones used for solving the inverse problem, which typically have less degrees of freedom. In this work, we tackle the 2D problem, and propose a forward model that uses a mesh-free discretization based on linear B-Splines. It combines the advantages of the FEM, while offering a fast and much simpler way of handling complex geometries. Another motivation for this work is that the underlying B-spline model is equally suitable for the subsequent reconstruction part of the process (solving the inverse problem). In particular, it is compatible with wavelets and multiresolution-type signal representations.
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基于样条的光学漫射层析成像正演模型
光学漫射层析成像(ODT)的重建算法在很大程度上依赖于快速准确的正演模型。任意几何和边界条件需要严格处理,因为它们是反问题的唯一输入。从这个角度来看,有限元方法(FEM)是实现正演模型的良好候选者。然而,这些方法需要对感兴趣的域进行网格化,这在日常基础上是不切实际的。FEM的另一个缺点是基函数通常与用于求解逆问题的基函数不兼容,后者通常具有较小的自由度。在这项工作中,我们解决了二维问题,并提出了一个使用基于线性b样条的无网格离散化的正演模型。它结合了FEM的优点,同时提供了处理复杂几何形状的快速和更简单的方法。这项工作的另一个动机是底层b样条模型同样适用于过程的后续重建部分(解决逆问题)。特别是,它与小波和多分辨率类型的信号表示兼容。
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