Below the Surface of the Non-local Bayesian Image Denoising Method

نویسندگان

  • Pablo Arias
  • Mila Nikolova
چکیده

The non-local Bayesian (NLB) patch-based approach of Lebrun, Buades, and Morel [12] is considered as a state-of-the-art method for the restoration of (color) images corrupted by white Gaussian noise. It gave rise to numerous ramifications like e.g., possible improvements, processing of various data sets and video. This article is the first attempt to analyse the method in depth in order to understand the main phenomena underlying its effectiveness. Our analysis, corroborated by numerical tests, shows several unexpected facts. In a variational setting, the firststep Bayesian approach to learn the prior for patches is equivalent to a pseudo-Tikhonov regularisation where the regularisation parameters can be positive or negative. Practically very good results in this step are mainly due to the aggregation stage – whose importance needs to be re-evaluated.

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تاریخ انتشار 2017