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Diffuse Optical Tomography through Solving a System of Quadratic Equations without Re-Estimating the Derivatives: the 'Frozen-Newton' Method

机译:通过求解二次方程组而无需重新估计导数的漫射光学层析成像:“冷冻牛顿”方法

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摘要

Optical tomography (OT) recovers the cross-sectional distribution of optical parameters inside a highly scattering medium from information contained in measurements that are performed on the boundary of the medium. The image reconstruction problem in OT can be considered as a large-scale optimization problem, in which an appropriately defined objective functional needs to be minimized. Most of earlier work is based on a forward model based iterative image reconstruction (MOBIIR) method. In this method, a Taylor series expansion of the forward propagation operator around the initial estimate, assumed to be close to the actual solution, is terminated at the first order term. The linearized perturbation equation is solved iteratively, re-estimating the first order term (or Jacobian) in each iteration, until a solution is reached. In this work we consider a nonlinear reconstruction problem, which has the second order term (Hessian) in addition to the first order. We show that in OT the Hessian is diagonally dominant and in this work an approximation involving the diagonal terms alone is used to formulate the nonlinear perturbation equation. This is solved using conjugate gradient search (CGS) without re-estimating either the Jacobian or the Hessian, resulting in reconstructions better than the original MOBIIR reconstruction. The computation time in this case is reduced by a factor of three.
机译:光学层析成像(OT)从在介质边界上执行的测量中包含的信息恢复高度散射介质内部的光学参数的横截面分布。 OT中的图像重建问题可以看作是大规模优化问题,其中需要适当定义目标功能。早期的大多数工作都基于基于正向模型的迭代图像重建(MOBIIR)方法。在这种方法中,假设近似于实际解,前向传播算子围绕初始估计值的泰勒级数展开在一阶项处终止。迭代求解线性化的摄动方程,在每次迭代中重新估计一阶项(或雅可比行列式),直到获得解。在这项工作中,我们考虑一个非线性重建问题,该问题除了第一阶之外还具有第二阶项(Hessian)。我们表明,在OT中,Hessian在对角线占主导地位,在这项工作中,仅包含对角线项的近似值用于制定非线性扰动方程。使用共轭梯度搜索(CGS)可以解决此问题,而无需重新估计Jacobian或Hessian,因此与原始MOBIIR重建相比,重建效果更好。在这种情况下,计算时间减少了三倍。

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    Kanmani B; Vasu RM;

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  • 年度 2004
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