成像反问题的生成变分模型

IF 1.9 Q1 MATHEMATICS, APPLIED SIAM journal on mathematics of data science Pub Date : 2021-04-26 DOI:10.1137/21m1414978
Andreas Habring, M. Holler
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引用次数: 11

摘要

本文研究了成像反问题正则化的一种新的变分模型的发展、分析和数值实现。该模型受生成卷积神经网络架构的启发;它旨在通过多层卷积和非线性惩罚从潜在空间中的变量生成未知,并惩罚相关成本。然而,与传统的基于神经网络的方法相比,卷积核是直接从测量数据中学习的,因此不需要训练。本工作提供了在函数空间设置中提出的模型的数学分析,包括证明解的正则性和存在性/稳定性,以及消除噪声的收敛性。此外,在离散环境下,推导了用该模型求解各种类型逆问题的数值算法。给出了在多幅测试图像的上色、去噪、去模糊、超分辨率和JPEG解压缩等方面的应用数值结果。
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A Generative Variational Model for Inverse Problems in Imaging
This paper is concerned with the development, analysis and numerical realization of a novel variational model for the regularization of inverse problems in imaging. The proposed model is inspired by the architecture of generative convolutional neural networks; it aims to generate the unknown from variables in a latent space via multi-layer convolutions and non-linear penalties, and penalizes an associated cost. In contrast to conventional neural-network-based approaches, however, the convolution kernels are learned directly from the measured data such that no training is required. The present work provides a mathematical analysis of the proposed model in a function space setting, including proofs for regularity and existence/stability of solutions, and convergence for vanishing noise. Moreover, in a discretized setting, a numerical algorithm for solving various types of inverse problems with the proposed model is derived. Numerical results are provided for applications in inpainting, denoising, deblurring under noise, super-resolution and JPEG decompression with multiple test images.
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