Article ID Journal Published Year Pages File Type
6937393 Computer Vision and Image Understanding 2018 48 Pages PDF
Abstract
The aim of a Super resolution (SR) technique is to construct a high-resolution image from a sequence of observed low-resolution ones of the same scene. One major roadblock of an SR reconstitution is removing noise and blur without destroying edges. We propose a novel multiframe image SR algorithm based on a convex combination of Bilateral Total Variation and a non-smooth second order variational regularization, using a controlled weighting parameter. We prove the existence of a minimizer of the proposed energy in the space of functions of bounded Hessian. The minimization of the convex functional is performed with a fast primal-dual algorithm. The simulation results and real experiments show the performance of the proposed algorithm in avoiding undesirable artifacts compared to other methods in the literature.
Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
Authors
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