Journal Article10.1088/0266-5611/16/5/316
Block-iterative interior point optimization methods for image reconstruction from limited data
TL;DR: In this paper, a block iterative interior point method for image reconstruction is proposed, in which at each step only the gradient of a single hn(x) is employed.
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Abstract: Iterative algorithms for image reconstruction often involve minimizing some cost function h(x) that measures the degree of agreement between the measured data and a theoretical parametrized model In addition, one may wish to have x satisfy certain constraints It is usually the case that the cost function is the sum of simpler functions: h(x) = ∑i = 1Ihi(x) Partitioning the set {i = 1,,I} as the union of the disjoint sets Bn,n = 1,,N, we let hn(x) = ∑iBnhi(x) The method presented here is block iterative, in the sense that at each step only the gradient of a single hn(x) is employed Convergence can be significantly accelerated, compared to that of the single-block (N = 1) method, through the use of appropriately chosen scaling factors The algorithm is an interior point method, in the sense that the images xk + 1 obtained at each step of the iteration satisfy the desired constraints Here the constraints are imposed by having the next iterate xk + 1 satisfy the gradient equation ∇F(xk + 1) = ∇F(xk)-tn∇hn(xk), for appropriate scalars tn, where the convex function F is defined and differentiable only on vectors satisfying the constraints Special cases of the algorithm that apply to tomographic image reconstruction, and permit inclusion of upper and lower bounds on individual pixels, are presented The focus here is on the development of the underlying convergence theory of the algorithm Behaviour of special cases has been considered elsewhere
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References
The relaxation method of finding the common point of convex sets and its application to the solution of problems in convex programming
TL;DR: This method can be regarded as a generalization of the methods discussed in [1–4] and applied to the approximate solution of problems in linear and convex programming.
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