The total generalized variation extends the total variation by incorporating higher-order smoothness. Thus, it can also suffer from similar discretization issues related to isotropy. Inspired by the success of novel discretization schemes of the total variation, there has been recent work to improve the second-order total generalized variation discretization, based on the same design idea. In this work, we propose to extend this to a general discretization scheme based on interpolation filters, for which we prove variational consistency. We then describe how to learn these interpolation filters to optimize the discretization for various imaging applications. We illustrate the performance of the method on a synthetic data set as well as for natural image denoising.
翻译:总的通用变异扩大了整个变异,纳入了高阶平滑。因此,它也可能受到与异质有关的类似分解问题的影响。受全变异新分解计划的成功鼓舞,最近根据同样的设计想法,进行了改进第二级全变异分解的工作。在这项工作中,我们提议将它扩大到基于内插过滤器的一般分解计划,对此我们证明是不同的。然后我们描述如何学习这些内插过滤器,以优化各种成像应用的分解。我们举例说明合成数据集和自然图像脱色方法的性能。</s>