首页> 外文期刊>Journal of Mathematics and Statistics >Two-Stage Estimation in Inverse Problems using Combined Wavelet Thresholding and Penalized Maximum Likelihood
【24h】

Two-Stage Estimation in Inverse Problems using Combined Wavelet Thresholding and Penalized Maximum Likelihood

机译:小波阈值与罚最大似然相结合的反问题两阶段估计

获取原文
       

摘要

Inverse problems occur in a wide range of practical scientific investigations where the variables of interest are only observed indirectly, such as magnetic and seismic imaging in geophysics, electrical tomography in industrial process monitoring, or PET scanning in medicine. Linear inverse problems can be thought of as highly multivariate regression problems with strong multicollinearity where the aim is to interpret regression parameters-prediction is not of interest. Estimation, to give a fitted model, is known as an inverse problem which can be ill-posed and ill-conditioned, making estimation using least-squares or maximum likelihood unstable or even impossible. Instead, one approach is to introduce additional constraints through a penalty term and a penalized least-squares or penalized maximum likelihood approach taken. The major cause of numerical problems in the estimation is noise in the data and hence using a pre-processing which reduces noise may be helpful. Wavelet thresholding has proven to be highly efficient at separating useful information from noise but there has been very little work considering the use of wavelet methods for inverse problems. Hence it is of great interest to investigate the usefulness of this as an additional step in estimation for inverse problems. In particular a two stage process is proposed combining inversion and wavelet thresholding. The thresholding will be considered as either a pre-inversion or post-inversion filter and the results compared. A simulation investigation is described and reported which compares these two alternative, and also which uses a minimum mean-squared error approach to choose the penalty parameter, in the inversion, and the threshold, in the wavelet thresholding, either sequentially or jointly. The results demonstrate that a combined approach is worthwhile and that for the piecewise constant test function considered, it is better to post-process after the inversion step than it is to use the more intuitive wavelet thresholding pre-processing step for noise reduction before inversion. This new approach hence has the potential to enhance the estimation results in a wide range of applied inverse problems.
机译:相反的问题发生在许多实际的科学研究中,这些研究仅间接地观察到感兴趣的变量,例如地球物理中的磁和地震成像,工业过程监控中的电层析成像或医学中的PET扫描。线性反问题可以被认为是具有强多重共线性的高度多元回归问题,其目的是解释回归参数,因此预测并不重要。给出拟合模型的估计被称为逆问题,可能会导致病态和病态,从而使使用最小二乘或最大似然法进行的估计不稳定甚至无法实现。取而代之的是,一种方法是通过惩罚项引入附加约束,并采用惩罚最小二乘或惩罚最大似然法。估计中出现数字问题的主要原因是数据中的噪声,因此使用减少噪声的预处​​理可能会有所帮助。小波阈值被证明在从噪声中分离有用信息方面非常有效,但是考虑到将小波方法用于反问题,很少有工作要做。因此,将其作为反问题估计中的附加步骤进行研究非常有用。特别地,提出了结合反演和小波阈值的两阶段过程。阈值将被视为反演前或反演后的滤波器,并对结果进行比较。描述并报告了模拟研究,该研究比较了这两种选择,并且还使用最小均方误差方法依次或联合选择了反演中的惩罚参数和小波阈值中的阈值。结果表明,组合方法是值得的,并且考虑到分段常数测试函数,与使用更直观的小波阈值预处理步骤来降低反演之前的噪声相比,在反演步骤之后进行后处理更好。因此,这种新方法具有在广泛的应用反问题中增强估计结果的潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号