Savvas Melidonis, P. Dobson, Y. Altmann, M. Pereyra, K. Zygalakis
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引用次数: 3

摘要

本文研究了一种新的、高效的马尔可夫链蒙特卡罗(MCMC)方法在低光子成像问题中进行贝叶斯推理,特别关注了涉及观测噪声过程明显偏离高斯噪声的情况,如二项噪声、几何噪声和低强度泊松噪声。这些问题具有挑战性的原因有很多。从推理的角度来看,低光子数会导致严重的可识别性问题,稳定性差和解决方案的高不确定性。此外,低光子模型通常表现出较差的规律性,这使得有效的贝叶斯计算变得困难;例如,硬非负性约束,非平滑先验,以及具有爆炸梯度的对数似然项。更准确地说,由于缺乏合适的正则性,妨碍了基于朗之万随机微分方程(SDE)数值近似的最先进的蒙特卡罗方法的使用,因为SDE及其数值近似都表现不佳。我们通过提出一种基于反射和正则化Langevin SDE的MCMC方法来解决这一困难,该方法在温和且易于验证的条件下被证明是适定的和指数遍历的。这使我们能够推导出四种反射近端Langevin MCMC算法来执行低光子成像问题中的贝叶斯计算。该方法在二项噪声、几何噪声和泊松噪声下进行了图像去模糊、去噪和上漆实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Bayesian Computation for Low-Photon Imaging Problems
This paper studies a new and highly efficient Markov chain Monte Carlo (MCMC) methodology to perform Bayesian inference in low-photon imaging problems, with particular attention to situations involving observation noise processes that deviate significantly from Gaussian noise, such as binomial, geometric and low-intensity Poisson noise. These problems are challenging for many reasons. From an inferential viewpoint, low-photon numbers lead to severe identifiability issues, poor stability and high uncertainty about the solution. Moreover, low-photon models often exhibit poor regularity properties that make efficient Bayesian computation difficult; e.g., hard non-negativity constraints, non-smooth priors, and log-likelihood terms with exploding gradients. More precisely, the lack of suitable regularity properties hinders the use of state-of-the-art Monte Carlo methods based on numerical approximations of the Langevin stochastic differential equation (SDE), as both the SDE and its numerical approximations behave poorly. We address this difficulty by proposing an MCMC methodology based on a reflected and regularised Langevin SDE, which is shown to be well-posed and exponentially ergodic under mild and easily verifiable conditions. This then allows us to derive four reflected proximal Langevin MCMC algorithms to perform Bayesian computation in low-photon imaging problems. The proposed approach is demonstrated with a range of experiments related to image deblurring, denoising, and inpainting under binomial, geometric and Poisson noise.
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