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首页> 外文期刊>Inverse problems and imaging >RISK ESTIMATORS FOR CHOOSING REGULARIZATION PARAMETERS IN ILL-POSED PROBLEMS - PROPERTIES AND LIMITATIONS
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RISK ESTIMATORS FOR CHOOSING REGULARIZATION PARAMETERS IN ILL-POSED PROBLEMS - PROPERTIES AND LIMITATIONS

机译:危险估算,用于选择界定问题的正则化参数 - 属性和限制

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This paper discusses the properties of certain risk estimators that recently regained popularity for choosing regularization parameters in ill-posed problems, in particular for sparsity regularization. They apply Stein's unbiased risk estimator (SURE) to estimate the risk in either the space of the unknown variables or in the data space. We will call the latter PSURE in order to distinguish the two different risk functions. It seems intuitive that SURE is more appropriate for ill-posed problems, since the properties in the data space do not tell much about the quality of the reconstruction. We provide theoretical studies of both approaches for linear Tikhonov regularization in a finite dimensional setting and estimate the quality of the risk estimators, which also leads to asymptotic convergence results as the dimension of the problem tends to infinity. Unlike previous works which studied single realizations of image processing problems with a very low degree of ill-posedness, we are interested in the statistical behaviour of the risk estimators for increasing ill-posedness. Interestingly, our theoretical results indicate that the quality of the SURE risk can deteriorate asymptotically for ill-posed problems, which is confirmed by an extensive numerical study. The latter shows that in many cases the SURE estimator leads to extremely small regularization parameters, which obviously cannot stabilize the reconstruction. Similar but less severe issues with respect to robustness also appear for the PSURE estimator, which in comparison to the rather conservative discrepancy principle leads to the conclusion that regularization parameter choice based on unbiased risk estimation is not a reliable procedure for ill-posed problems. A similar numerical study for sparsity regularization demonstrates that the same issue appears in non-linear variational regularization approaches.
机译:本文讨论了一定风险估计的特性,该风险估计变得普及,以便在不良问题中选择正则化参数,特别是对于稀疏正规化。它们应用Stein的无偏见风险估算器(肯定)来估计未知变量的空间的风险或数据空间。我们将调用后一桩,以区分两种不同的风险功能。它似乎直观地肯定更适合弊端的问题,因为数据空间中的属性没有讲述重建的质量。我们在有限尺寸设定中提供线性Tikhonov正规方法的理论研究,并估计风险估计的质量,这也导致渐近会聚结果,因为问题的尺寸趋于无穷大。与以前的作品不同,研究了单一的图像处理问题的图像处理问题,我们对风险估算者的统计行为感兴趣,以增加弊端。有趣的是,我们的理论结果表明,肯定风险的质量可能会恶化,以便呈现不良问题,这是由广泛的数值研究证实的。后者表明,在许多情况下,确定估计者会导致极小的正则化参数,这显然无法稳定重建。对于稳健性的类似但不太严重的问题也出现了人士估算器,这与相当保守的差异原则相比,这是基于无偏见的风险估计的正则化参数选择的结论不是一个不偏见的问题的可靠程序。对稀疏正规化的类似数值研究表明,非线性变分正规化方法中出现相同的问题。

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