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Astronomical image restoration using variational methods and model combination

机译:使用变分方法和模型组合的天文图像恢复

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In this work we develop a variational framework for the combination of several prior models in Bayesian image restoration and apply it to astronomical images. Since each combination of a given observation model and a prior model produces a different posterior distribution of the underlying image, the use of variational posterior distribution approximation on each posterior will produce as many posterior approximations as priors we want to combine. A unique approximation is obtained here by finding the distribution on the unknown image given the observations that minimizes a linear convex combination of the Kullback-Leibler divergences associated with each posterior distribution. We find this distribution in closed form and also relate the proposed approach to other prior combination methods in the literature. Experimental results on both synthetic images and on real astronomical images validate the proposed approach.
机译:在这项工作中,我们为贝叶斯图像复原中的多个先前模型的组合开发了一个变分框架,并将其应用于天文图像。由于给定观察模型和先验模型的每种组合都会产生基础图像的不同后验分布,因此在每个后验上使用变分后验分布近似将产生与我们要组合的先验一样多的后验近似。在给定观察结果的情况下,通过找到未知图像上的分布,可以使与每个后验分布相关的Kullback-Leibler散度的线性凸组合最小化,从而获得唯一近似。我们发现这种分布是封闭的形式,并且还将提出的方法与文献中的其他现有组合方法相关联。在合成图像和真实天文图像上的实验结果验证了该方法的有效性。

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