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Bibliografie

Conference Paper (international conference)

Avoiding Undesirable Solutions of Deep Blind Image Deconvolution

Brožová Antonie, Šmídl Václav

: Proceedings of the 19th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2024), p. 559-566 , Eds: Radeva Petia, Furnari Antonino, Bouatouch Kadi, Sousa A. Augusto

: International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2024) /19./, (Roma, IT, 20240227)

: GA20-27939S, GA ČR, GA24-10400S, GA ČR

: Blind Image Deconvolution, Deep Image Prior, No-Blur, Variational Bayes

: 10.5220/0012397600003660

: http://library.utia.cas.cz/separaty/2024/AS/brozova-0583748.pdf

(eng): Blind image deconvolution (BID) is a severely ill-posed optimization problem requiring additional information, typically in the form of regularization. Deep image prior (DIP) promises to model a naturally looking image due to a well-chosen structure of a neural network. The use of DIP in BID results in a significant perfor-mance improvement in terms of average PSNR. In this contribution, we offer qualitative analysis of selected DIP-based methods w.r.t. two types of undesired solutions: blurred image (no-blur) and a visually corrupted image (solution with artifacts). We perform a sensitivity study showing which aspects of the DIP-based algorithms help to avoid which undesired mode. We confirm that the no-blur can be avoided using either sharp image prior or tuning of the hyperparameters of the optimizer. The artifact solution is a harder problem since variations that suppress the artifacts often suppress good solutions as well. Switching to the structural similarity index measure fro m L 2 norm in loss was found to be the most successful approach to mitigate the artifacts.

: IN

: 10201