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Main Authors: Reixach, David, Morros, Josep Ramon
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.10679
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author Reixach, David
Morros, Josep Ramon
author_facet Reixach, David
Morros, Josep Ramon
contents Low-rank Deconvolution (LRD) has appeared as a new multi-dimensional representation model that enjoys important efficiency and flexibility properties. In this work we ask ourselves if this analytical model can compete against Deep Learning (DL) frameworks like Deep Image Prior (DIP) or Blind-Spot Networks (BSN) and other classical methods in the task of signal restoration. More specifically, we propose to extend LRD with differential regularization. This approach allows us to easily incorporate Total Variation (TV) and integral priors to the formulation leading to considerable performance tested on signal restoration tasks such image denoising and video enhancement, and at the same time benefiting from its small computational cost.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10679
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fast Unsupervised Tensor Restoration via Low-rank Deconvolution
Reixach, David
Morros, Josep Ramon
Computer Vision and Pattern Recognition
Low-rank Deconvolution (LRD) has appeared as a new multi-dimensional representation model that enjoys important efficiency and flexibility properties. In this work we ask ourselves if this analytical model can compete against Deep Learning (DL) frameworks like Deep Image Prior (DIP) or Blind-Spot Networks (BSN) and other classical methods in the task of signal restoration. More specifically, we propose to extend LRD with differential regularization. This approach allows us to easily incorporate Total Variation (TV) and integral priors to the formulation leading to considerable performance tested on signal restoration tasks such image denoising and video enhancement, and at the same time benefiting from its small computational cost.
title Fast Unsupervised Tensor Restoration via Low-rank Deconvolution
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.10679