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Necessary and Sufficient Convergence Conditions for Algebraic Image Reconstruction Algorithms

机译:代数图像重建算法的充要条件

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The Landweber scheme is an algebraic reconstruction method and includes several important algorithms as its special cases. The convergence of the Landweber scheme is of both theoretical and practical importance. Using the singular value decomposition (SVD), we derive an iterative representation formula for the Landweber scheme and consequently establish the necessary and sufficient conditions for its convergence. In addition to verifying the necessity and sufficiency of known convergent conditions, we find new convergence conditions allowing relaxation coefficients in an interval not covered by known results. Moreover, it is found that the Landweber scheme can converge within finite iterations when the relaxation coefficients are chosen to be the inverses of squares of the nonzero singular values. Furthermore, the limits of the Landweber scheme in all convergence cases are shown to be the sum of the minimum norm solution of a weighted least-squares problem and an oblique projection of the initial image onto the null space of the system matrix.
机译:Landweber方案是一种代数重建方法,其中包括几种重要的算法作为特例。 Landweber方案的收敛在理论上和实践上都很重要。使用奇异值分解(SVD),我们得出了Landweber方案的迭代表示公式,并因此为其收敛建立了必要和充分的条件。除了验证已知收敛条件的必要性和充分性之外,我们发现新的收敛条件还允许松弛系数处于已知结果未涵盖的区间内。此外,发现当选择松弛系数为非零奇异值的平方的倒数时,Landweber方案可以在有限的迭代中收敛。此外,在所有收敛情况下,Landweber方案的极限都显示为加权最小二乘问题的最小范数解和初始图像在系统矩阵的零空间上的倾斜投影之和。

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