Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.

Edge-preserving image smoothing is one of the fundamental tasks in the field of computer graphics and computer vision. Recently, L0 gradient minimization (LGM) has been proposed for this purpose. In contrast to the total variation (TV) model which employs the L1 norm of the image gradient, the LGM m...

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Main Authors: Xueshun Pang, Suqi Zhang, Junhua Gu, Lingling Li, Boying Liu, Huaibin Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4575179?pdf=render
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spelling doaj-d4706b5721b04264aef4b35268d3833f2020-11-25T01:18:47ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01109e013868210.1371/journal.pone.0138682Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.Xueshun PangSuqi ZhangJunhua GuLingling LiBoying LiuHuaibin WangEdge-preserving image smoothing is one of the fundamental tasks in the field of computer graphics and computer vision. Recently, L0 gradient minimization (LGM) has been proposed for this purpose. In contrast to the total variation (TV) model which employs the L1 norm of the image gradient, the LGM model adopts the L0 norm and yields much better results for the piecewise constant image. However, as an improvement of the total variation (TV) model, the LGM model also suffers, even more seriously, from the staircasing effect and is not robust to noise. In order to overcome these drawbacks, in this paper, we propose an improvement of the LGM model by prefiltering the image gradient and employing the L1 fidelity. The proposed improved LGM (ILGM) behaves robustly to noise and overcomes the staircasing artifact effectively. Experimental results show that the ILGM is promising as compared with the existing methods.http://europepmc.org/articles/PMC4575179?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Xueshun Pang
Suqi Zhang
Junhua Gu
Lingling Li
Boying Liu
Huaibin Wang
spellingShingle Xueshun Pang
Suqi Zhang
Junhua Gu
Lingling Li
Boying Liu
Huaibin Wang
Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
PLoS ONE
author_facet Xueshun Pang
Suqi Zhang
Junhua Gu
Lingling Li
Boying Liu
Huaibin Wang
author_sort Xueshun Pang
title Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
title_short Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
title_full Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
title_fullStr Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
title_full_unstemmed Improved L0 Gradient Minimization with L1 Fidelity for Image Smoothing.
title_sort improved l0 gradient minimization with l1 fidelity for image smoothing.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Edge-preserving image smoothing is one of the fundamental tasks in the field of computer graphics and computer vision. Recently, L0 gradient minimization (LGM) has been proposed for this purpose. In contrast to the total variation (TV) model which employs the L1 norm of the image gradient, the LGM model adopts the L0 norm and yields much better results for the piecewise constant image. However, as an improvement of the total variation (TV) model, the LGM model also suffers, even more seriously, from the staircasing effect and is not robust to noise. In order to overcome these drawbacks, in this paper, we propose an improvement of the LGM model by prefiltering the image gradient and employing the L1 fidelity. The proposed improved LGM (ILGM) behaves robustly to noise and overcomes the staircasing artifact effectively. Experimental results show that the ILGM is promising as compared with the existing methods.
url http://europepmc.org/articles/PMC4575179?pdf=render
work_keys_str_mv AT xueshunpang improvedl0gradientminimizationwithl1fidelityforimagesmoothing
AT suqizhang improvedl0gradientminimizationwithl1fidelityforimagesmoothing
AT junhuagu improvedl0gradientminimizationwithl1fidelityforimagesmoothing
AT linglingli improvedl0gradientminimizationwithl1fidelityforimagesmoothing
AT boyingliu improvedl0gradientminimizationwithl1fidelityforimagesmoothing
AT huaibinwang improvedl0gradientminimizationwithl1fidelityforimagesmoothing
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