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Weighting Algorithm and Relaxation Strategies of the Landweber Method for Image Reconstruction

机译:Landweber方法的图像重建权重算法与松弛策略

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摘要

The iterative approach is important for image reconstruction with ill-posed problem, especially for limited angle reconstruction. Most of iterative algorithms can be written in the general Landweber scheme. In this context, appropriate relaxation strategies and appropriately chosen weights are critical to yield reconstructed images of high quality. In this paper, based on reducing the condition number of matrix A(T) A, we find one method of weighting matrices for the general Landweber method to improve the reconstructed results. For high resolution images, the approximate iterative matrix is derived. And the new weighting matrices and corresponding relaxation strategics are proposed for the general Landweber method with large dimensional number. Numerical simulations show that the proposed weighting methods are effective in improving the quality of reconstructed image for both complete projection data and limited angle projection data.
机译:迭代方法对于具有不适定问题的图像重建非常重要,尤其是对于有限角度的重建。大多数迭代算法都可以用通用的Landweber方案编写。在这种情况下,适当的松弛策略和适当选择的权重对于产生高质量的重建图像至关重要。本文在减少矩阵A(T)A的条件数的基础上,为通用Landweber方法找到一种加权矩阵的方法,以改善重建结果。对于高分辨率图像,导出近似迭代矩阵。针对大维数的通用Landweber方法,提出了新的加权矩阵及相应的松弛策略。数值模拟表明,所提出的加权方法对于提高完整投影数据和有限角度投影数据的重建图像质量都是有效的。

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