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Anisotropic diffusion regularization methods for diffuse optical tomography using edge prior information

机译:利用边缘先验信息的扩散光学层析成像各向异性扩散正则化方法

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Diffuse optical tomography ( DOT) is a non-invasive functional imaging modality that aims to image the optical properties of biological organs. The forward problem of the light propagation of DOT can be modelled as a diffusion process and is expressed as a differential diffusion equation with boundary conditions. The solution of the DOT inverse problem can be formulated as a minimization of some functional that measures the discrepancy between the measured data and the data produced by representation of the modelled object. The minimization of this term alone would force the solution to be consistent with the data and the solver used for this purpose. But since in practice data are always accompanied with noise and with some jump discontinuities, these will unavoidably yield unsatisfactory solutions, so some regularization to restore the solution is required. In this paper we introduce an anisotropic regularization term using a priori structural information about the object. This term aims to reduce the noise associated with the data and to preserve the edges in the solution by a combined strategy using the a priori edge information and the diffusion flux analysis of the local structures at each iteration. To accelerate the iterative solver we use a particular method called the lagged diffusivity Newton-Krylov method. The whole proposed strategy, which makes use of a priori diffusion information has been developed and evaluated on simulated data.
机译:漫射光学层析成像(DOT)是一种旨在对生物器官的光学特性成像的非侵入性功能成像方式。 DOT光传播的正向问题可以建模为扩散过程,并表示为具有边界条件的微分扩散方程。 DOT逆问题的解决方案可以表述为某些功能的最小化,该功能可以测量测量数据与通过建模对象表示生成的数据之间的差异。仅将此术语最小化将迫使解决方案与用于此目的的数据和求解器保持一致。但是,由于实际上数据总是伴随着噪声和某些跳跃间断,因此不可避免地会产生不令人满意的解,因此需要某种正规化来恢复该解。在本文中,我们使用关于对象的先验结构信息引入各向异性正则化项。该术语旨在通过使用先验边缘信息和每次迭代时局部结构的扩散通量分析的组合策略来减少与数据相关的噪声并通过解决方案保留边缘。为了加速迭代求解器,我们使用一种称为滞后扩散率牛顿-克里洛夫(Newton-Krylov)方法的特殊方法。整个拟议的策略,利用先验的扩散信息已被开发和评估模拟数据。

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