Convex blind image deconvolution with inverse filtering

  • Xiao Guang Lv
  • , Fang Li
  • , Tieyong Zeng

Research output: Contribution to journalArticlepeer-review

10 Scopus citations

Abstract

Blind image deconvolution is the process of estimating both the original image and the blur kernel from the degraded image with only partial or no information about degradation and the imaging system. It is a bilinear ill-posed inverse problem corresponding to the direct problem of convolution. Regularization methods are used to handle the ill-posedness of blind deconvolution and get meaningful solutions. In this paper, we investigate a convex regularized inverse filtering method for blind deconvolution of images. We assume that the support region of the blur object is known, as has been done in a few existing works. By studying the inverse filters of signal and image restoration problems, we observe the oscillation structure of the inverse filters. Inspired by the oscillation structure of the inverse filters, we propose to use the star norm to regularize the inverse filter. Meanwhile, we use the total variation to regularize the resulting image obtained by convolving the inverse filter with the degraded image. The proposed minimization model is shown to be convex. We employ the first-order primal-dual method for the solution of the proposed minimization model. Numerical examples for blind image restoration are given to show that the proposed method outperforms some existing methods in terms of peak signal-to-noise ratio (PSNR), structural similarity (SSIM), visual quality and time consumption.

Original languageEnglish
Article number035003
JournalInverse Problems
Volume34
Issue number3
DOIs
StatePublished - 23 Jan 2018

Keywords

  • blind image deconvolution
  • primal-dual
  • regularization
  • star norm
  • total variation

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