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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Minimization of multi-penalty functionals by alternating iterative thresholding and optimal parameter choices
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Minimization of multi-penalty functionals by alternating iterative thresholding and optimal parameter choices

机译:通过交替迭代阈值和最佳参数选择来最小化多罚函数

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摘要

Inspired by several recent developments in regularization theory, optimization, and signal processing, we present and analyze a numerical approach to multi-penalty regularization in spaces of sparsely represented functions. The sparsity prior is motivated by the largely expected geometrical/structured features of high-dimensional data, which may not be well-represented in the framework of typically more isotropic Hilbert spaces. In this paper, we are particularly interested in regularizers which are able to correctly model and separate the multiple components of additively mixed signals. This situation is rather common as pure signals may be corrupted by additive noise. To this end, we consider a regularization functional composed by a data-fidelity term, where signal and noise are additively mixed, a non-smooth and non-convex sparsity promoting term, and a penalty term to model the noise. We propose and analyze the convergence of an iterative alternating algorithm based on simple iterative thresholding steps to perform the minimization of the functional. By means of this algorithm, we explore the effect of choosing different regularization parameters and penalization norms in terms of the quality of recovering the pure signal and separating it from additive noise. For a given fixed noise level numerical experiments confirm a significant improvement in performance compared to standard one-parameter regularization methods. By using high-dimensional data analysis methods such as principal component analysis, we are able to show the correct geometrical clustering of regularized solutions around the expected solution. Eventually, for the compressive sensing problems considered in our experiments we provide a guideline for a choice of regularization norms and parameters.
机译:受正则化理论,优化和信号处理的最新发展启发,我们提出并分析了在稀疏表示的函数空间中进行多罚正则化的数值方法。稀疏先验是由高预期数据的几何/结构特征引起的,这些特征在通常更具各向同性的希尔伯特空间的框架中可能无法很好地表现出来。在本文中,我们对能够正确建模和分离加性混合信号的多个分量的正则化器特别感兴趣。这种情况相当普遍,因为纯信号可能会被加性噪声破坏。为此,我们考虑由数据保真度项组成的正则化函数,其中信号和噪声被加法混合,一个非平滑和非凸的稀疏性促进项,以及一个对噪声建模的惩罚项。我们提出并分析基于简单迭代阈值步骤的迭代迭代算法的收敛性,以实现功能的最小化。通过该算法,我们从恢复纯信号并将其与加性噪声分离的质量方面探讨了选择不同的正则化参数和惩罚规范的效果。对于给定的固定噪声水平,数值实验证实了与标准的一参数正则化方法相比,性能有了显着提高。通过使用诸如主成分分析之类的高维数据分析方法,我们能够显示正则化解在期望解周围的正确几何聚类。最终,对于我们实验中考虑的压感问题,我们为选择正则化范数和参数提供了指南。

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