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Regularization Parameter Selection for Nonlinear Iterative Image Restoration and MRI Reconstruction Using GCV and SURE-Based Methods

机译:正则参数选取非线性迭代图像复原和重建mRI使用GCV和基于sURE方法

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摘要

Regularized iterative reconstruction algorithms for imaging inverse problems require selection of appropriate regularization parameter values. We focus on the challenging problem of tuning regularization parameters for nonlinear algorithms for the case of additive (possibly complex) Gaussian noise. Generalized cross-validation (GCV) and (weighted) mean-squared error (MSE) approaches (based on Stein's Unbiased Risk Estimate— SURE) need the Jacobian matrix of the nonlinear reconstruction operator (representative of the iterative algorithm) with respect to the data. We derive the desired Jacobian matrix for two types of nonlinear iterative algorithms: a fast variant of the standard iterative reweighted least-squares method and the contemporary split-Bregman algorithm, both of which can accommodate a wide variety of analysis- and synthesis-type regularizers. The proposed approach iteratively computes two weighted SURE-type measures: Predicted-SURE and Projected-SURE (that require knowledge of noise variance σ2), and GCV (that does not need σ2) for these algorithms. We apply the methods to image restoration and to magnetic resonance image (MRI) reconstruction using total variation (TV) and an analysis-type ℓ1-regularization. We demonstrate through simulations and experiments with real data that minimizing Predicted-SURE and Projected-SURE consistently lead to near-MSE-optimal reconstructions. We also observed that minimizing GCV yields reconstruction results that are near-MSE-optimal for image restoration and slightly sub-optimal for MRI. Theoretical derivations in this work related to Jacobian matrix evaluations can be extended, in principle, to other types of regularizers and reconstruction algorithms.
机译:用于成像逆问题的正则迭代重建算法需要选择适当的正则化参数值。我们专注于对非线性算法调整正则化参数的挑战性问题(可能复杂的)高斯噪声。广义交叉验证(GCV)和(加权)平均误差(MSE)方法(基于Stein的无偏见风险估计 - 确定)需要关于数据的非线性重建操作员(代表迭代算法代表的Jacobian矩阵。我们为两种类型的非线性迭代算法导出了所需的雅各族矩阵:标准迭代重新免除最小二乘法和当代分裂 - BREGMAN算法的快速变体,两者都可以适应各种分析和合成型计划。 。所提出的方法迭代地计算两种加权确定措施:预测肯定和投影 - 确定(需要了解噪声方差σ 2 )和gcv(这不需要σ 2 < / sup>)对于这些算法。我们将方法应用于图像恢复和使用总体变化(TV)和分析ℓ1正则化的磁共振图像(MRI)重建。我们通过模拟和实验证明了具有最小化预测和预测的实际数据的实验,并始终导致近MSE最佳的重建。我们还观察到,最小化GCV产生重建结果,即近MSE最佳的图像恢复和MRI略微最佳。本工作中的理论推导器原则上可以延长其他类型的校长和重建算法。

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