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Using the topological derivative for initializing a Markov-chain Monte Carlo reconstruction in fluorescence tomography

机译:利用拓扑衍生物来初始化荧光断层扫描中的马尔可夫链蒙特卡罗重建

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Fluorescence tomography aims at the reconstruction of the concentration and life-time of fluorescent inclusions from boundary measurements of light emitted. The underlying ill-posed problem is often solved with gradient descent of Gauss-Newton methods, for example. Unfortunately, these approaches don't allow to assess the quality of the reconstruction (e.g. the variance and covariance of the parameters) and also require the tuning of regularization parameters. We intend to mitigate this drawback by the application of topological derivatives and Markov-chain Monte-Carlo (MCMC) methods for solving the inverse problem. This submission focuses on the topological derivative, which is used for the initialization of the MCMC code. The basic idea is to probe every location inside the domain with an infinitely small fluorescent ball and to estimate the effect of such a perturbation on the residual, which is the difference of the theoretically predicted data to the true measurement. Obviously, the reconstructed inclusions should be placed at locations for which the topological derivative is significantly negative, i.e. where the residual decreases. Previous results show that usual first-order approximations deteriorates for probe inclusions close to the boundary. This seems to be a particular feature of certain inverse problems such as fluorescence tomography or electrical impedance tomography. Fortunately this flaw may be corrected using a few higher-order terms which may be explicitly determined With this extension the topological derivative can be utilized as a one-step method for the determination of the number of inclusions and their approximate locations. This outcome is used as initialization for the MCMC algorithm
机译:荧光断层扫描旨在重建从发出的光的边界测量的荧光夹杂物的浓度和寿命。例如,潜在的不良问题往往用高斯-牛顿方法的梯度下降来解决。不幸的是,这些方法不允许评估重建的质量(例如,参数的方差和协方差),并且还需要调整正则化参数。我们打算通过应用拓扑衍生物和马尔可夫链Monte-Carlo(MCMC)方法来缓解这种缺点来解决逆问题。此提交侧重于拓扑导数,用于初始化MCMC代码。基本思想是用无限的小荧光球探测域内的每个位置,并估计这种扰动对残差的效果,这是理论上预测数据到真实测量的差异。显然,重建的夹杂物应放置在拓扑衍生物显着负的位置,即残余减少。上一篇结果表明,通常的一阶近似用于靠近边界的探针夹杂物劣化。这似乎是某些逆问题的特定特征,例如荧光断层扫描或电阻抗断层扫描。幸运的是,可以使用几个高阶术语来校正该缺陷,这些缺陷可以用这种扩展明确地确定拓扑衍生物可以用作确定夹杂物的数量和近似位置的一步法。此结果用作MCMC算法的初始化

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