Article ID Journal Published Year Pages File Type
562932 Signal Processing 2014 13 Pages PDF
Abstract

•We present a novel image restoration method that combines TV and PSI models.•Poisson singular integral (PSI) model is capable to preserve the textures.•We study the behavior of the PSI filter as a function of its parameter.•The combination TV + PSI provides better restorations than the TV or PSI alone.•The proposed method is competitive with state-of-the-art restoration methods.

In this paper, a novel Bayesian image restoration method based on a combination of priors is presented. It is well known that the Total Variation (TV) image prior preserves edge structures while imposing smoothness on the solutions. However, it tends to oversmooth textured areas. To alleviate this problem we propose to combine the TV and the Poisson Singular Integral (PSI) models, which, as we will show, preserves the image textures. The PSI prior depends on a parameter that controls the shape of the filter. A study on the behavior of the filter as a function of this parameter is presented. Our restoration model utilizes a bound for the TV image model based on the majorization–minimization principle, and performs maximum a posteriori Bayesian inference. In order to assess the performance of the proposed approach, in the experimental section we compare it with other restoration methods.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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