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Research on improved image reconstruction algorithms of OCT based on incomplete projection data

机译:基于不完整投影数据的OCT改进图像重建算法研究

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In order to improve the quality and solve the problem of low speed of image reconstruction in the traditional optical computerized tomography (OCT) when the data acquired is incomplete projection, the multiple constrained of genetic algorithm based on algebraic iterative was proposed. Generally speaking, under the condition of multiple-objective optimization, the common extreme point for all the objective functions doesn't exist. So we can achieve the preferable compromise in the contradictions of multiple objectives. In this article, there are three constrained conditions. The first one is the maximum entropy criterion which is used mostly to solve the problem of OCT image reconstruction when the data acquired is incomplete projection recently. The second one is the minimum criteria of peak value which is introduced to suppress noise effectively and ensure the gliding property of the image reconstruction, because of the first one leading to noise amplification during the iterative process. The last constrained condition is the minimum criteria of the difference between the projection again of image reconstruction and the original projection. The concept of penalize-function is introduced into the genetic algorithm, which would transform the constrained optimization problem to unconstrained. It is clearly demonstrated from the experiment results that the algorithm reconstruction technique can efficiently improve the quality of images reconstruction of the incomplete projection data.
机译:为了提高传统光学光学断层扫描(OCT)中数据采集不完全投影时的图像质量,解决图像重建速度慢的问题,提出了基于代数迭代的遗传算法的多重约束。一般而言,在多目标优化的条件下,所有目标函数都不存在共同的极点。因此,我们可以在多个目标之间取得较好的妥协。在本文中,存在三个约束条件。第一个是最大熵准则,主要用于解决近来获取的数据为不完整投影时的OCT图像重建问题。第二个是峰值的最小标准,其引入是为了有效抑制噪声并确保图像重建的滑动特性,因为第一个导致迭代过程中的噪声放大。最后的约束条件是再次进行图像重建的投影与原始投影之间的差异的最小标准。惩罚函数的概念被引入到遗传算法中,它将约束优化问题转化为无约束。从实验结果清楚地表明,算法重建技术可以有效地提高不完整投影数据的图像重建质量。

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