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TENSOR-FACTORIZATION-BASED 3D SINGLE IMAGE SUPER-RESOLUTION WITH SEMI-BLIND POINT SPREAD FUNCTION ESTIMATION

Citation Author(s):
Janka Hatvani, Adrian Basarab, Jérome Michetti, Miklós Gyöngy, Denis Kouamé
Submitted by:
Janka Hatvani
Last updated:
11 September 2019 - 12:17pm
Document Type:
Poster
Document Year:
2019
Event:
Presenters:
Janka Hatvani
Paper Code:
2970
 

A volumetric non-blind single image super-resolution technique using tensor factorization has been recently introduced by our group. That method allowed a 2-order-of-magnitude faster high-resolution image reconstruction with equivalent image quality compared to state-of-the-art algorithms. In this work a joint alternating recovery of the high-resolution image and of the unknown point spread function parameters is proposed. The method is evaluated on dental computed tomography images. The algorithm was compared to an existing 3D super-resolution method using low-rank and total variation regularization, combined with the same alternating PSF-optimization. The two algorithms have shown similar improvement in PSNR, but our method converged roughly 40 times faster, under 6 minutes both in simulation and on experimental dental computed tomography data.

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