Image recovery via transform learning and low-rank modeling: the power of complementary regularizers
Recent works on adaptive sparse and on low-rank signal modeling have demonstrated their usefulness in various image/video processing applications. Patch-based methods exploit local patch sparsity, whereas other works apply low-rankness of grouped patches to exploit image non-local structures. Howeve...
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sg-ntu-dr.10356-1610372022-08-12T05:07:14Z Image recovery via transform learning and low-rank modeling: the power of complementary regularizers Wen, Bihan Li, Yanjun Bresler, Yoram School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Sparse Representation Image Denoising Recent works on adaptive sparse and on low-rank signal modeling have demonstrated their usefulness in various image/video processing applications. Patch-based methods exploit local patch sparsity, whereas other works apply low-rankness of grouped patches to exploit image non-local structures. However, using either approach alone usually limits performance in image reconstruction or recovery applications. In this work, we propose a simultaneous sparsity and low-rank model, dubbed STROLLR, to better represent natural images. In order to fully utilize both the local and non-local image properties, we develop an image restoration framework using a transform learning scheme with joint low-rank regularization. The approach owes some of its computational efficiency and good performance to the use of transform learning for adaptive sparse representation rather than the popular synthesis dictionary learning algorithms, which involve approximation of NP-hard sparse coding and expensive learning steps. We demonstrate the proposed framework in various applications to image denoising, inpainting, and compressed sensing based magnetic resonance imaging. Results show promising performance compared to state-of-the-art competing methods. Ministry of Education (MOE) This work was supported in part by the National Science Foundation (NSF) under Grant CCF-1320953 and Grant IIS 14-47879. Bihan Wen was supported in part by the Ministry of Education, Singapore, through a start-up grant. 2022-08-12T05:07:14Z 2022-08-12T05:07:14Z 2020 Journal Article Wen, B., Li, Y. & Bresler, Y. (2020). Image recovery via transform learning and low-rank modeling: the power of complementary regularizers. IEEE Transactions On Image Processing, 29, 5310-5323. https://dx.doi.org/10.1109/TIP.2020.2980753 1057-7149 https://hdl.handle.net/10356/161037 10.1109/TIP.2020.2980753 32203020 2-s2.0-85082833623 29 5310 5323 en IEEE Transactions on Image Processing © 2020 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Sparse Representation Image Denoising Wen, Bihan Li, Yanjun Bresler, Yoram Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
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Recent works on adaptive sparse and on low-rank signal modeling have demonstrated their usefulness in various image/video processing applications. Patch-based methods exploit local patch sparsity, whereas other works apply low-rankness of grouped patches to exploit image non-local structures. However, using either approach alone usually limits performance in image reconstruction or recovery applications. In this work, we propose a simultaneous sparsity and low-rank model, dubbed STROLLR, to better represent natural images. In order to fully utilize both the local and non-local image properties, we develop an image restoration framework using a transform learning scheme with joint low-rank regularization. The approach owes some of its computational efficiency and good performance to the use of transform learning for adaptive sparse representation rather than the popular synthesis dictionary learning algorithms, which involve approximation of NP-hard sparse coding and expensive learning steps. We demonstrate the proposed framework in various applications to image denoising, inpainting, and compressed sensing based magnetic resonance imaging. Results show promising performance compared to state-of-the-art competing methods. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Wen, Bihan Li, Yanjun Bresler, Yoram |
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Article |
author |
Wen, Bihan Li, Yanjun Bresler, Yoram |
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Wen, Bihan |
title |
Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
title_short |
Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
title_full |
Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
title_fullStr |
Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
title_full_unstemmed |
Image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
title_sort |
image recovery via transform learning and low-rank modeling: the power of complementary regularizers |
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2022 |
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https://hdl.handle.net/10356/161037 |
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