Dictionary learning based noisy image super-resolution via distance penalty weight model.

In this study, we address the problem of noisy image super-resolution. Noisy low resolution (LR) image is always obtained in applications, while most of the existing algorithms assume that the LR image is noise-free. As to this situation, we present an algorithm for noisy image super-resolution whic...

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Main Authors: Yulan Han, Yongping Zhao, Qisong Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5536359?pdf=render
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spelling doaj-a9851ef75c8c4b92bfbc02e9d5db74952020-11-24T21:52:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01127e018216510.1371/journal.pone.0182165Dictionary learning based noisy image super-resolution via distance penalty weight model.Yulan HanYongping ZhaoQisong WangIn this study, we address the problem of noisy image super-resolution. Noisy low resolution (LR) image is always obtained in applications, while most of the existing algorithms assume that the LR image is noise-free. As to this situation, we present an algorithm for noisy image super-resolution which can achieve simultaneously image super-resolution and denoising. And in the training stage of our method, LR example images are noise-free. For different input LR images, even if the noise variance varies, the dictionary pair does not need to be retrained. For the input LR image patch, the corresponding high resolution (HR) image patch is reconstructed through weighted average of similar HR example patches. To reduce computational cost, we use the atoms of learned sparse dictionary as the examples instead of original example patches. We proposed a distance penalty model for calculating the weight, which can complete a second selection on similar atoms at the same time. Moreover, LR example patches removed mean pixel value are also used to learn dictionary rather than just their gradient features. Based on this, we can reconstruct initial estimated HR image and denoised LR image. Combined with iterative back projection, the two reconstructed images are applied to obtain final estimated HR image. We validate our algorithm on natural images and compared with the previously reported algorithms. Experimental results show that our proposed method performs better noise robustness.http://europepmc.org/articles/PMC5536359?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Yulan Han
Yongping Zhao
Qisong Wang
spellingShingle Yulan Han
Yongping Zhao
Qisong Wang
Dictionary learning based noisy image super-resolution via distance penalty weight model.
PLoS ONE
author_facet Yulan Han
Yongping Zhao
Qisong Wang
author_sort Yulan Han
title Dictionary learning based noisy image super-resolution via distance penalty weight model.
title_short Dictionary learning based noisy image super-resolution via distance penalty weight model.
title_full Dictionary learning based noisy image super-resolution via distance penalty weight model.
title_fullStr Dictionary learning based noisy image super-resolution via distance penalty weight model.
title_full_unstemmed Dictionary learning based noisy image super-resolution via distance penalty weight model.
title_sort dictionary learning based noisy image super-resolution via distance penalty weight model.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description In this study, we address the problem of noisy image super-resolution. Noisy low resolution (LR) image is always obtained in applications, while most of the existing algorithms assume that the LR image is noise-free. As to this situation, we present an algorithm for noisy image super-resolution which can achieve simultaneously image super-resolution and denoising. And in the training stage of our method, LR example images are noise-free. For different input LR images, even if the noise variance varies, the dictionary pair does not need to be retrained. For the input LR image patch, the corresponding high resolution (HR) image patch is reconstructed through weighted average of similar HR example patches. To reduce computational cost, we use the atoms of learned sparse dictionary as the examples instead of original example patches. We proposed a distance penalty model for calculating the weight, which can complete a second selection on similar atoms at the same time. Moreover, LR example patches removed mean pixel value are also used to learn dictionary rather than just their gradient features. Based on this, we can reconstruct initial estimated HR image and denoised LR image. Combined with iterative back projection, the two reconstructed images are applied to obtain final estimated HR image. We validate our algorithm on natural images and compared with the previously reported algorithms. Experimental results show that our proposed method performs better noise robustness.
url http://europepmc.org/articles/PMC5536359?pdf=render
work_keys_str_mv AT yulanhan dictionarylearningbasednoisyimagesuperresolutionviadistancepenaltyweightmodel
AT yongpingzhao dictionarylearningbasednoisyimagesuperresolutionviadistancepenaltyweightmodel
AT qisongwang dictionarylearningbasednoisyimagesuperresolutionviadistancepenaltyweightmodel
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