PLoS ONE (Jan 2020)

Efficient learning-based blur removal method based on sparse optimization for image restoration.

  • Haoyuan Yang,
  • Xiuqin Su,
  • Songmao Chen,
  • Wenhua Zhu,
  • Chunwu Ju

DOI
https://doi.org/10.1371/journal.pone.0230619
Journal volume & issue
Vol. 15, no. 3
p. e0230619

Abstract

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In imaging systems, image blurs are a major source of degradation. This paper proposes a parameter estimation technique for linear motion blur, defocus blur, and atmospheric turbulence blur, and a nonlinear deconvolution algorithm based on sparse representation. Most blur removal techniques use image priors to estimate the point spread function (PSF); however, many common forms of image priors are unable to exploit local image information fully. In this paper, the proposed method does not require models of image priors. Further, it is capable of estimating the PSF accurately from a single input image. First, a blur feature in the image gradient domain is introduced, which has a positive correlation with the degree of blur. Next, the parameters for each blur type are estimated by a learning-based method using a general regression neural network. Finally, image restoration is performed using a half-quadratic optimization algorithm. Evaluation tests confirmed that the proposed method outperforms other similar methods and is suitable for dealing with motion blur in real-life applications.