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Bregman Regularized Statistical Image Reconstruction Method and Application to Prior Image Constrained Compressed Sensing (PICCS)

机译:Bregman正则化统计图像重建方法及其在先验图像约束压缩感知中的应用

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Recently, the Statistical Image Reconstruction (SIR) and compressed sensing (CS) framework has shown promise in the x-ray computed tomography (CT) community. In this paper, we propose to establish an equivalence between the unconstrained optimization problem and a constrained optimization with explicit data consistency term. The immediate consequence of the equivalence is to enable one to use the well-developed optimization method to solve the constrained optimization problem to refine the solution of the corresponding unconstrained optimization problem. As an application of this equivalence, the method was used to develop a convergent and numerically efficient implementation for the prior image constrained compressed sensing (PICCS).
机译:最近,统计图像重建(SIR)和压缩传感(CS)框架在X射线计算机断层扫描(CT)社区中显示出了希望。本文提出用显式数据一致性项建立无约束优化问题和约束优化之间的等价关系。等价的直接后果是使人们能够使用发达的优化方法来解决约束优化问题,以完善相应的无约束优化问题的解决方案。作为此等价物的一种应用,该方法用于为先前的图像约束压缩传感(PICCS)开发一种收敛的且在数值上高效的实现方式。

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