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Local Kernels That Approximate Bayesian Regularization and Proximal Operators

机译:近似贝叶斯正规化和近端运营商的本地内核

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摘要

In this paper, we broadly connect kernel-based filtering (e.g., approaches such as the bilateral filter and non-local means, but also many more) with general variational formulations of Bayesian regularized least squares and the related concept of proximal operators. Variational/Bayesian/proximal formulations often result in optimization problems that do not have closed-form solutions and therefore typically require global iterative solutions. Our main contribution here is to establish how one can approximate the solution of the resulting global optimization problems using locally adaptive filters with specific kernels. Our results are valid for small regularization strength (i.e., weak noise), but the approach is powerful enough to be useful for a wide range of applications because we expose how to derive a "kernelized" solution to these problems that approximates the global solution in one shot, using only local operations. As another side benefit in the reverse direction, given a local data-adaptive filter constructed with a particular choice of kernel, we enable the interpretation of such filters in the variational/Bayesian/proximal framework.
机译:在本文中,我们广泛地连接基于内核的滤波(例如,双边滤波器和非本地手段,而且还有更多)与贝叶斯正规的最小二乘和近端运算符的相关概念的一般变分配方。变形/贝叶斯/近端配方通常​​导致不具有闭合液解决方案的优化问题,因此通常需要全局迭代解决方案。我们这里的主要贡献是建立如何使用具有特定内核的本地自适应滤波器来估计产生的全局优化问题的解决方案。我们的结果对于小的正则化强度(即弱噪声)有效,但该方法足够强大,可用于广泛的应用程序,因为我们公开了如何从近似于全局解决方案的这些问题导出“京钟化”解决方案一次拍摄,仅使用本地操作。作为反向的另一个侧面优势,给定由特定选择内核构建的本地数据自适应滤波器,我们能够解释变分/贝叶斯/近端框架中的这种滤波器。

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