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Text Image Deblurring Using Kernel Sparsity Prior

19

Citations

39

References

2018

Year

Abstract

Previous methods on text image motion deblurring seldom consider the sparse characteristics of the blur kernel. This paper proposes a new text image motion deblurring method by exploiting the sparse properties of both text image itself and kernel. It incorporates the L <sub>0</sub> -norm for regularizing the blur kernel in the deblurring model, besides the L <sub>0</sub> sparse priors for the text image and its gradient. Such a L <sub>0</sub> -norm-based model is efficiently optimized by half-quadratic splitting coupled with the fast conjugate descent method. To further improve the quality of the recovered kernel, a structure-preserving kernel denoising method is also developed to filter out the noisy pixels, yielding a clean kernel curve. Experimental results show the superiority of the proposed method. The source code and results are available at: https://github.com/shenjianbing/text-image-deblur.

References

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