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Sampling Strategies in Bayesian Inversion: A Study of RTO and Langevin Methods

Computing Research Repository (CoRR)(2024)

Tech Univ Denmark

Cited 0|Views14
Abstract
. This paper studies two classes of sampling methods for the solution of inverse problems, namely Randomize-Then-Optimize (RTO), which is rooted in sensitivity analysis, and Langevin methods, which are rooted in the Bayesian framework. The two classes of methods correspond to different assumptions and yield samples from different target distributions. We highlight the main conceptual and theoretical differences between the two approaches and compare them from a practical point of view by tackling two classical inverse problems in imaging: deblurring and inpainting. We show that the choice of the sampling method has a significant impact on the reconstruction and the proposed uncertainty.
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Inverse problems,sampling,RTO,Langevin methods,deblurring,inpainting,parameter selection
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要点】:本文研究了两种解决逆问题的采样策略——随机优化(RTO)方法和朗之万(Langevin)方法,并揭示了这两种方法在概念、理论和实际应用中的主要差异。

方法】:通过分析RTO方法与Langevin方法的基本原理和假设,对比了两种方法在解决图像去模糊和图像修复两个经典逆问题中的表现。

实验】:通过实验处理了图像去模糊和图像修复问题,具体数据集名称未提及,但实验结果表明RTO方法在参数选择上更为稳健。