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Optical diffusion tomography by iterative-coordinate-descent optimization in a Bayesian framework

机译:贝叶斯框架中的迭代坐标下降优化光学扩散层析成像

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摘要

Frequency-domain diffusion imaging uses the magnitude and phase of modulated light propagating through a highly scattering medium to reconstruct an image of the spatially dependent scattering or absorption coefficients in the medium. An inversion algorithm is formulated in a Bayesian framework and an efficient optimization technique is presented for calculating the maximum a posteriori image. In this framework the data are modeled as a complex Gaussian random vector with shot-noise statistics, and the unknown image is modeled as a generalized Gaussian Markov random field. The shot-noise statistics provide correct weighting for the measurement, and the generalized Gaussian Markov random field prior enhances the reconstruction quality and retains edges in the reconstruction. A localized relaxation algorithm, the iterative-coordinate-descent algorithm, is employed as a computationally efficient optimization technique. Numerical results for two-dimensional images show that the Bayesian framework with the new optimization scheme outperforms conventional approaches in both speed and reconstruction quality.
机译:频域扩散成像使用传播通过高散射介质的调制光的大小和相位来重构介质中空间相关散射或吸收系数的图像。在贝叶斯框架中提出了一种反演算法,并提出了一种用于计算最大后验图像的有效优化技术。在此框架中,将数据建模为具有散粒噪声统计信息的复杂高斯随机向量,并将未知图像建模为广义高斯马尔可夫随机场。散粒噪声统计数据为测量提供了正确的权重,而广义的高斯马尔可夫随机场先验可提高重建质量并在重建中保留边缘。局部松弛算法,即迭代坐标下降算法,被用作计算有效的优化技术。二维图像的数值结果表明,采用新优化方案的贝叶斯框架在速度和重建质量上均优于传统方法。

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