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Parameter estimation for hybrid wavelet-total variation regularization

机译:混合小波-总变异正则化的参数估计

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In many image restoration/reconstruction problems, using redundant linear decompositions also named as frames may be fruitful. Moreover, Total Variation (TV) is also widely used in the edge-preserving regularization literature. Associating these two tools in a joint regularization framework may be of great interest since they are somehow complementary. However, estimating the regularization parameters in this case becomes a tricky issue which cannot be performed by using standard estimators. In this work, a hierarchical model is introduced to solve this problem within a fully Bayesian framework. A hybrid MCMC algorithm is subsequently proposed to sample from the derived posterior distribution. We show that this algorithm allows the regularization parameters to be determined accurately. We finally investigate its application to parallel MRI reconstruction, where the use of a joint wavelet-TV regularization is also novel.
机译:在许多图像恢复/重建问题中,使用冗余线性分解也命名为帧可能是富有成效的。此外,总变化(TV)也广泛应用于边缘保存正则化文献。将这两个工具与联合正则化框架相关联,因为它们是以某种方式互补的。但是,在这种情况下估计正则化参数成为无法通过使用标准估计来执行的棘手问题。在这项工作中,引入了一个分层模型来解决完全贝叶斯框架内的这个问题。随后提出了一种混合MCMC算法从衍生的后部分布中采样。我们表明该算法允许准确地确定正则化参数。我们终于将其应用于并行MRI重建的应用,其中使用联合小波电视正规化也是新颖的。

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