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Evolution-theory-based algorithm for optical diffusion tomography

机译:基于演化理论的光学扩散层析成像算法

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In diffuse optical diffuse tomography (DOT) one attempts to reconstruct cross-sectional images of various body parts given data from near-infrared transmission measurements. The cross-sectional images display the spatial distribution of optical properties, such as the absorption coefficient μ_a, the scattering coefficient μ_s, or a combination thereof. Most of the currently employed imaging algorithms are model-based iterative image reconstruction (MOBIIR) schemes that employ information about the gradient of a suitably defined objective function with respect to the optical properties. In this approach the image reconstruction problem is considered as a nonlinear optimization problem, where the unknowns are the values of optical properties throughout the medium to be reconstructed. It is well known that gradient-based schemes are inefficient in areas where the gradient is close to zero. These schemes often get caught in local minima close to the starting point of the search and have problems finding the global minimum. To overcome this problem we propose to employ optimization algorithms that make use of evolution strategies. These schemes are in general much better suited to find global minima and may be a better choice for the image reconstruction problem in diffuse optical tomography.
机译:在漫射光漫射层析成像(DOT)中,一种尝试是根据来自近红外透射测量的数据重建身体各个部位的横截面图像。横截面图像显示光学特性的空间分布,例如吸收系数μ_a,散射系数μ_s或它们的组合。当前采用的大多数成像算法都是基于模型的迭代图像重建(MOBIIR)方案,该方案采用有关适当定义的目标函数相对于光学特性的梯度的信息。在这种方法中,图像重建问题被视为非线性优化问题,其中未知数是整个待重建介质的光学特性值。众所周知,基于梯度的方案在梯度接近零的区域效率低下。这些方案经常陷入接近搜索起点的局部最小值,并且在寻找全局最小值时遇到问题。为了克服这个问题,我们建议采用利用进化策略的优化算法。这些方案通常更适合于找到全局最小值,并且可能是弥散光学层析成像中图像重建问题的更好选择。

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