Learning spectral windowing parameters for regularization using unbiased predictive risk and generalized cross validation techniques for multiple data sets

IF 1.2 4区 数学 Q2 MATHEMATICS, APPLIED Inverse Problems and Imaging Pub Date : 2021-12-23 DOI:10.3934/ipi.2023006
Michael J. Byrne, R. Renaut
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引用次数: 0

Abstract

During the inversion of discrete linear systems noise in data can be amplified and result in meaningless solutions. To combat this effect, characteristics of solutions that are considered desirable are mathematically implemented during inversion, which is a process called regularization. The influence of provided prior information is controlled by non-negative regularization parameter(s). There are a number of methods used to select appropriate regularization parameters, as well as a number of methods used for inversion. New methods of unbiased risk estimation and generalized cross validation are derived for finding spectral windowing regularization parameters. These estimators are extended for finding the regularization parameters when multiple data sets with common system matrices are available. It is demonstrated that spectral windowing regularization parameters can be learned from these new estimators applied for multiple data and with multiple windows. The results demonstrate that these modified methods, which do not require the use of true data for learning regularization parameters, are effective and efficient, and perform comparably to a learning method based on estimating the parameters using true data. The theoretical developments are validated for the case of two dimensional image deblurring. The results verify that the obtained estimates of spectral windowing regularization parameters can be used effectively on validation data sets that are separate from the training data, and do not require known data.
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使用无偏预测风险和多数据集的广义交叉验证技术学习正则化的谱窗参数
在离散线性系统的反演过程中,数据中的噪声可能会被放大,并导致无意义的解。为了对抗这种影响,在反演过程中对被认为是理想的解的特征进行数学实现,这是一个称为正则化的过程。所提供的先验信息的影响由非负正则化参数控制。有许多方法可用于选择适当的正则化参数,也有许多方法用于反演。推导了无偏风险估计和广义交叉验证的新方法,用于寻找谱窗正则化参数。当具有公共系统矩阵的多个数据集可用时,这些估计量被扩展用于寻找正则化参数。证明了谱窗口正则化参数可以从这些应用于多个数据和多个窗口的新估计中学习。结果表明,这些改进的方法不需要使用真实数据来学习正则化参数,是有效的,并且与基于使用真实数据估计参数的学习方法相比性能良好。在二维图像去模糊的情况下验证了理论发展。结果验证了所获得的谱窗正则化参数的估计可以有效地用于与训练数据分离的验证数据集,并且不需要已知数据。
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来源期刊
Inverse Problems and Imaging
Inverse Problems and Imaging 数学-物理:数学物理
CiteScore
2.50
自引率
0.00%
发文量
55
审稿时长
>12 weeks
期刊介绍: Inverse Problems and Imaging publishes research articles of the highest quality that employ innovative mathematical and modeling techniques to study inverse and imaging problems arising in engineering and other sciences. Every published paper has a strong mathematical orientation employing methods from such areas as control theory, discrete mathematics, differential geometry, harmonic analysis, functional analysis, integral geometry, mathematical physics, numerical analysis, optimization, partial differential equations, and stochastic and statistical methods. The field of applications includes medical and other imaging, nondestructive testing, geophysical prospection and remote sensing as well as image analysis and image processing. This journal is committed to recording important new results in its field and will maintain the highest standards of innovation and quality. To be published in this journal, a paper must be correct, novel, nontrivial and of interest to a substantial number of researchers and readers.
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