一种用于大规模图像去模糊的维鲁棒Gibbs采样的分块方案

IF 1.1 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Jesse Adams, M. Morzfeld, K. Joyce, M. Howard, A. Luttman
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引用次数: 3

摘要

使用马尔可夫链蒙特卡罗(MCMC)方法从贝叶斯反问题的后验分布中抽样的最重要挑战之一是抽样在计算上变得难以处理的速度,作为估计参数数量的函数。在图像去模糊方面,文献中有许多MCMC算法,但很少尝试对大于像素(参数)的图像进行重建。在用于诊断动态材料实验的定量x射线摄影中,图像可能要大得多,导致数百万个参数出现问题。我们解决了这个问题,并通过阻塞方案构建吉布斯采样器,该方案导致稀疏和高度结构化的后验精度矩阵。吉布斯采样器在采样过程中自然地利用了特殊的矩阵结构,使其具有“维鲁棒性”,因此其混合特性几乎与图像大小无关,并且生成一个样本在计算上是可行的。维鲁棒性可以在适度的计算平台上对大规模图像去模糊问题的后验进行表征。我们通过在美国能源部内华达国家安全基地的天鹅座双束x射线摄影设备上对大小像素(参数)的x射线照片进行去模糊处理,证明了这种方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A blocking scheme for dimension-robust Gibbs sampling in large-scale image deblurring
ABSTRACT Among the most significant challenges with using Markov chain Monte Carlo (MCMC) methods for sampling from the posterior distributions of Bayesian inverse problems is the rate at which the sampling becomes computationally intractable, as a function of the number of estimated parameters. In image deblurring, there are many MCMC algorithms in the literature, but few attempt reconstructions for images larger than pixels ( parameters). In quantitative X-ray radiography, used to diagnose dynamic materials experiments, the images can be much larger, leading to problems with millions of parameters. We address this issue and construct a Gibbs sampler via a blocking scheme that leads to a sparse and highly structured posterior precision matrix. The Gibbs sampler naturally exploits the special matrix structure during sampling, making it ‘dimension-robust’, so that its mixing properties are nearly independent of the image size, and generating one sample is computationally feasible. The dimension-robustness enables the characterization of posteriors for large-scale image deblurring problems on modest computational platforms. We demonstrate applicability of this approach by deblurring radiographs of size pixels ( parameters) taken at the Cygnus Dual Beam X-ray Radiography Facility at the U.S. Department of Energy's Nevada National Security Site.
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来源期刊
Inverse Problems in Science and Engineering
Inverse Problems in Science and Engineering 工程技术-工程:综合
自引率
0.00%
发文量
0
审稿时长
6 months
期刊介绍: Inverse Problems in Science and Engineering provides an international forum for the discussion of conceptual ideas and methods for the practical solution of applied inverse problems. The Journal aims to address the needs of practising engineers, mathematicians and researchers and to serve as a focal point for the quick communication of ideas. Papers must provide several non-trivial examples of practical applications. Multidisciplinary applied papers are particularly welcome. Topics include: -Shape design: determination of shape, size and location of domains (shape identification or optimization in acoustics, aerodynamics, electromagnets, etc; detection of voids and cracks). -Material properties: determination of physical properties of media. -Boundary values/initial values: identification of the proper boundary conditions and/or initial conditions (tomographic problems involving X-rays, ultrasonics, optics, thermal sources etc; determination of thermal, stress/strain, electromagnetic, fluid flow etc. boundary conditions on inaccessible boundaries; determination of initial chemical composition, etc.). -Forces and sources: determination of the unknown external forces or inputs acting on a domain (structural dynamic modification and reconstruction) and internal concentrated and distributed sources/sinks (sources of heat, noise, electromagnetic radiation, etc.). -Governing equations: inference of analytic forms of partial and/or integral equations governing the variation of measured field quantities.
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