In many large-scale inverse problems, such as computed tomography and image deblurring, characterization of sharp edges in the solution is desired. Within the Bayesian approach to inverse problems, edge-preservation is often achieved using Markov random field priors based on heavy-tailed distributions. Another strategy, popular in statistics, is the application of hierarchical shrinkage priors. An advantage of this formulation lies in expressing the prior as a conditionally Gaussian distribution depending of global and local hyperparameters which are endowed with heavy-tailed hyperpriors. In this work, we revisit the shrinkage horseshoe prior and introduce its formulation for edge-preserving settings. We discuss a sampling framework based on the Gibbs sampler to solve the resulting hierarchical formulation of the Bayesian inverse problem. In particular, one of the conditional distributions is high-dimensional Gaussian, and the rest are derived in closed form by using a scale mixture representation of the heavy-tailed hyperpriors. Applications from imaging science show that our computational procedure is able to compute sharp edge-preserving posterior point estimates with reduced uncertainty.
翻译:在许多大型反向问题中,例如计算成的断层和图像分流,需要将解决方案中的尖锐边缘定性为尖锐边缘。在巴伊西亚对反面问题采取的方法中,通常使用基于重尾分布的Markov随机场前端方法来实现边缘保护。另一个在统计中流行的战略是等级缩缩缩前端的应用。这种配方的优点在于将先前的分布表示为有条件的高斯分布,这取决于全球和地方超光度计,而高光度计具有重尾细的超亮度。在这项工作中,我们先重新研究收缩马蹄木的配方,并引入边缘保留设置的配方。我们讨论基于Gibbs采样器的取样框架,以解决由此产生的巴伊西反面问题的等级配方。特别是,一个条件性分布是高空,其余部分是封闭式的,使用重尾部超亮度超亮度的成份混合表示。成像科学的应用表明,我们的计算程序能够对精锐边缘保留后端点的估计数进行压缩。