变分成像中的可解释模型学习:一种双层优化方法

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED
Juan Carlos De los Reyes, David Villacís
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引用次数: 0

摘要

摘要在本文中,我们研究了在变分成像问题中使用双层优化来进行模型学习。双层学习是深度学习方法的一种替代方法,它可以产生完全可解释的模型。然而,它需要对底层数学模型进行详细的分析。研究了具有空间依赖和斑块依赖参数的全变分模型的二层学习问题。我们的研究包括解映射的方向可微性,最优性条件的推导,以及解算子的Bouligand次微分的表征。我们还提出了一种两阶段信任区域算法来解决问题,并使用CelebA数据集进行了数值测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Model Learning in Variational Imaging: A Bilevel Optimization Approach
Abstract In this paper, we investigate the use of bilevel optimization for model learning in variational imaging problems. Bilevel learning is an alternative approach to deep learning methods, which leads to fully interpretable models. However, it requires a detailed analytical insight into the underlying mathematical model. We focus on the bilevel learning problem for total variation models with spatially- and patch-dependent parameters. Our study encompasses the directional differentiability of the solution mapping, the derivation of optimality conditions, and the characterization of the Bouligand subdifferential of the solution operator. We also propose a two-phase trust-region algorithm for solving the problem and present numerical tests using the CelebA dataset.
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来源期刊
CiteScore
2.30
自引率
8.30%
发文量
32
审稿时长
24 months
期刊介绍: The IMA Journal of Applied Mathematics is a direct successor of the Journal of the Institute of Mathematics and its Applications which was started in 1965. It is an interdisciplinary journal that publishes research on mathematics arising in the physical sciences and engineering as well as suitable articles in the life sciences, social sciences, and finance. Submissions should address interesting and challenging mathematical problems arising in applications. A good balance between the development of the application(s) and the analysis is expected. Papers that either use established methods to address solved problems or that present analysis in the absence of applications will not be considered. The journal welcomes submissions in many research areas. Examples are: continuum mechanics materials science and elasticity, including boundary layer theory, combustion, complex flows and soft matter, electrohydrodynamics and magnetohydrodynamics, geophysical flows, granular flows, interfacial and free surface flows, vortex dynamics; elasticity theory; linear and nonlinear wave propagation, nonlinear optics and photonics; inverse problems; applied dynamical systems and nonlinear systems; mathematical physics; stochastic differential equations and stochastic dynamics; network science; industrial applications.
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