METHODS OF ZERO SPACE FOR BLIND IDENTIFICATION OF POINT SPREAD FUNCTION IMAGE

Authors

  • Roman Naumovych Kvietnyi Vinnitsa National Technical University
  • Olha Yuriivna Sofyna Vinnitsa National Technical University
  • Yurii Anatoliiovych Buniak IPP "InnoVinn" Vinnitsa

Abstract

It was shown that the left side null space of the autoregression (AR) matrix operator is the lexicographical presentation of the point spread function (PSF) on condition the AR parameters are common for original and blurred images. The found PSF was used as initial one in Luce-Richardson (LR) iterative deconvolution schema. It was offered amplified variant of LR schema which has fast convergence. The initial PSF was not changed sufficiently by LR iterative process. This fact points on its optimality due to analytic properties. The deblurring of degraded by defocusing, moving, vibration and haze images shows simplicity and effectiveness of the proposed method.

Author Biographies

Roman Naumovych Kvietnyi, Vinnitsa National Technical University

Professor, Head of the Department of automation and information-measuring devices

Olha Yuriivna Sofyna, Vinnitsa National Technical University

c.t.s., Senior Lecturer of the Department of automation and information-measuring devices

Yurii Anatoliiovych Buniak, IPP "InnoVinn" Vinnitsa

Candidate of Technical Sciences, chief

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How to Cite

[1]
R. N. Kvietnyi, O. Y. Sofyna, and Y. A. Buniak, “METHODS OF ZERO SPACE FOR BLIND IDENTIFICATION OF POINT SPREAD FUNCTION IMAGE”, ІТКІ, vol. 24, no. 2, Apr. 2013.

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Section

Mathematical modeling and computational methods

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