Larusson Fridrik, Fantini Sergio, Miller Eric L
Biomed Opt Express. 2012 May 1;3(5):1006-24. doi: 10.1364/BOE.3.001006. Epub 2012 Apr 18.
A parametric level set method (PaLS) is implemented for image reconstruction for hyperspectral diffuse optical tomography (DOT). Chromophore concentrations and diffusion amplitude are recovered using a linearized Born approximation model and employing data from over 100 wavelengths. The images to be recovered are taken to be piecewise constant and a newly introduced, shape-based model is used as the foundation for reconstruction. The PaLS method significantly reduces the number of unknowns relative to more traditional level-set reconstruction methods and has been show to be particularly well suited for ill-posed inverse problems such as the one of interest here. We report on reconstructions for multiple chromophores from simulated and experimental data where the PaLS method provides a more accurate estimation of chromophore concentrations compared to a pixel-based method.
一种参数水平集方法(PaLS)被用于高光谱漫射光学断层扫描(DOT)的图像重建。使用线性化玻恩近似模型并采用来自100多个波长的数据来恢复发色团浓度和扩散幅度。待恢复的图像被视为分段常数,并使用一种新引入的基于形状的模型作为重建的基础。与更传统的水平集重建方法相比,PaLS方法显著减少了未知数的数量,并且已被证明特别适用于诸如这里所关注的这类不适定逆问题。我们报告了从模拟和实验数据中对多种发色团的重建结果,其中与基于像素的方法相比,PaLS方法能更准确地估计发色团浓度。