Applied Sciences (May 2023)

A Graduated Non-Convexity Technique for Dealing Large Point Spread Functions

  • Antonio Boccuto,
  • Ivan Gerace,
  • Valentina Giorgetti

DOI
https://doi.org/10.3390/app13105861
Journal volume & issue
Vol. 13, no. 10
p. 5861

Abstract

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This paper focuses on reducing the computational cost of a GNC Algorithm for deblurring images when dealing with full symmetric Toeplitz block matrices composed of Toeplitz blocks. Such a case is widespread in real cases when the PSF has a vast range. The analysis in this paper centers around the class of gamma matrices, which can perform vector multiplications quickly. The paper presents a theoretical and experimental analysis of how γ-matrices can accurately approximate symmetric Toeplitz matrices. The proposed approach involves adding a minimization step for a new approximation of the energy function to the GNC technique. Specifically, we replace the Toeplitz matrices found in the blocks of the blur operator with γ-matrices in this approximation. The experimental results demonstrate that the new GNC algorithm proposed in this paper reduces computation time by over 20% compared with its previous version. The image reconstruction quality, however, remains unchanged.

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