基于展开凸差分法的逆排序平方和稀疏正则化

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Takayuki Sasaki;Kazuya Hayase;Masaki Kitahara;Shunsuke Ono
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引用次数: 0

摘要

本文提出了一种稀疏正则化方法,该方法采用了一种新的排序正则化函数。稀疏正则化是求解欠定逆问题的常用方法。传统的稀疏正则化函数,如$L_{1}$-norm,存在振幅低估和扰动消失等问题。反向排序加权$L_{1}$-norm (ROWL)解决了这些问题,但引入了新的挑战。这些包括开发基于理论的算法,而不是启发式算法,降低计算复杂性,支持自动确定众多参数,并确保迭代的数量保持可行。在这项研究中,我们提出了一种新的稀疏正则化函数,称为逆排序平方和(RSSS),然后构建了一个展开算法,解决了上述两个问题和这四个挑战。我们提出的方法的核心思想在于将优化问题转化为一个已知解的凸差分规划问题。在实验中,我们将RSSS正则化方法应用于图像去模糊和超分辨率任务,验证了其优于常规方法的性能,并且计算复杂度都是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Regularization With Reverse Sorted Sum of Squares via an Unrolled Difference-of-Convex Approach
This paper proposes a sparse regularization method with a novel sorted regularization function. Sparse regularization is commonly used to solve underdetermined inverse problems. Traditional sparse regularization functions, such as $L_{1}$-norm, suffer from problems like amplitude underestimation and vanishing perturbations. The reverse ordered weighted $L_{1}$-norm (ROWL) addresses these issues but introduces new challenges. These include developing an algorithm grounded in theory, not heuristics, reducing computational complexity, enabling the automatic determination of numerous parameters, and ensuring the number of iterations remains feasible. In this study, we propose a novel sparse regularization function called the reverse sorted sum of squares (RSSS) and then construct an unrolled algorithm that addresses both the aforementioned two problems and these four challenges. The core idea of our proposed method lies in transforming the optimization problem into a difference-of-convex programming problem, for which solutions are known. In experiments, we apply the RSSS regularization method to image deblurring and super-resolution tasks and confirmed its superior performance compared to conventional methods, all with feasible computational complexity.
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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