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An evolutionary multi-criterion optimization approach utilizing the characteristics of strength distribution for sparse CT image reconstruction

机译:利用强度分布特征的稀疏CT图像进化多准则优化方法

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In general, computed tomography (CT) tries to reconstruct a cross-section image by gathering projection data in multiple directions. However, there are several cases where angles of the projection have been strictly limited. In this case, the missing information should be estimated correctly in order to create a highly accurate reconstructed image. This problem is called "sparse CT" and known as one of the typical inverse problems. Since amount of information needed for reconstructing an image is missing, it needs to find several high quality solutions in order to estimate a true image. There have been several approaches proposed for solving this problem and they could achieve a certain result in the case of a low missing ratio problem, while there have been few approaches for the problem being large missing ratio. Therefore there is no established standard method for this problem. In this study, a new approach based on the Gerchberg-Saxton algorithm (GS algorithm) and evolutionary multi-criterion optimization (EMO) is proposed for sparse CT. The GS algorithm is known as a powerful technique for recovering the missing information in the field of phase retrieval problem. The proposed approach tries to find several solutions being high quality by using the framework of EMO. Also, the feature of our approach is not only the combination of GS and EMO, but also the implementation of genetic operators considering the characteristics of Fourier spectrum. Through applying to some typical images, the effectiveness of the proposed approach was investigated.
机译:通常,计算机断层扫描(CT)尝试通过在多个方向上收集投影数据来重建横截面图像。然而,有几个情况下投影的角度受到严格限制的情况。在这种情况下,应正确估计缺失的信息,以便创建高度准确的重建图像。此问题称为“稀疏CT”并且称为典型的逆问题之一。由于缺少重建图像所需的信息量,因此需要找到几种高质量解决方案,以估计真实的图像。已经提出了解决这个问题的几种方法,并且他们可以在低缺失比例问题的情况下实现某种结果,而问题缺少缺失比率很少。因此,没有建立这个问题的标准方法。在本研究中,提出了一种基于Gerchberg-Saxton算法(GS算法)和进化多标准优化(EMO)的新方法,用于稀疏CT。 GS算法称为恢复阶段检索问题领域中缺失信息的强大技术。建议的方法试图通过使用EMO的框架找到多种质量的解决方案。此外,我们的方法的特征不仅是GS和EMO的组合,还不仅是考虑傅里叶谱的特征的遗传算子的实现。通过应用一些典型的图像,研究了所提出的方法的有效性。

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