Colour image segmentation based on a convex K‐means approach

Abstract Image segmentation is a fundamental and challenging task in image processing and computer vision. The colour image segmentation is attracting more attention as the colour image provides more information than the grey image. A variational model based on a convex K‐means approach to segment c...

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Main Authors: Tingting Wu, Xiaoyu Gu, Jinbo Shao, Ruoxuan Zhou, Zhi Li
Format: Article
Language:English
Published: Wiley 2021-06-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12128
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spelling doaj-1b2551c670a3497c898d3d3d2ccedfc42021-07-14T13:20:42ZengWileyIET Image Processing1751-96591751-96672021-06-011581596160610.1049/ipr2.12128Colour image segmentation based on a convex K‐means approachTingting Wu0Xiaoyu Gu1Jinbo Shao2Ruoxuan Zhou3Zhi Li4School of Science Nanjing University of Posts and Telecommunications Nanjing ChinaSchool of Science Nanjing University of Posts and Telecommunications Nanjing ChinaSchool of Science Nanjing University of Posts and Telecommunications Nanjing ChinaCollege of Oceanography and Space Informatics China University of Petroleum Qingdao ChinaThe Department of Computer Science and Technology Shanghai Key Laboratory of Multidimensional Information Processing East China Normal University Shanghai ChinaAbstract Image segmentation is a fundamental and challenging task in image processing and computer vision. The colour image segmentation is attracting more attention as the colour image provides more information than the grey image. A variational model based on a convex K‐means approach to segment colour images is proposed. The proposed variational method uses a combination of l1 and l2 regularizers to maintain edge information of objects in images while overcoming the staircase effect. Meanwhile, our one‐stage strategy is an improved version based on the smoothing and thresholding strategy, which contributes to improving the accuracy of segmentation. The proposed method performs the following steps. First, the colour set which can be determined by human or the K‐means method is specified. Second, a variational model to obtain the most appropriate colour for each pixel from the colour set via convex relaxation and lifting is used. The Chambolle–Pock algorithm and simplex projection are applied to solve the variational model effectively. Experimental results and comparison analysis demonstrate the effectiveness and robustness of the method.https://doi.org/10.1049/ipr2.12128
collection DOAJ
language English
format Article
sources DOAJ
author Tingting Wu
Xiaoyu Gu
Jinbo Shao
Ruoxuan Zhou
Zhi Li
spellingShingle Tingting Wu
Xiaoyu Gu
Jinbo Shao
Ruoxuan Zhou
Zhi Li
Colour image segmentation based on a convex K‐means approach
IET Image Processing
author_facet Tingting Wu
Xiaoyu Gu
Jinbo Shao
Ruoxuan Zhou
Zhi Li
author_sort Tingting Wu
title Colour image segmentation based on a convex K‐means approach
title_short Colour image segmentation based on a convex K‐means approach
title_full Colour image segmentation based on a convex K‐means approach
title_fullStr Colour image segmentation based on a convex K‐means approach
title_full_unstemmed Colour image segmentation based on a convex K‐means approach
title_sort colour image segmentation based on a convex k‐means approach
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-06-01
description Abstract Image segmentation is a fundamental and challenging task in image processing and computer vision. The colour image segmentation is attracting more attention as the colour image provides more information than the grey image. A variational model based on a convex K‐means approach to segment colour images is proposed. The proposed variational method uses a combination of l1 and l2 regularizers to maintain edge information of objects in images while overcoming the staircase effect. Meanwhile, our one‐stage strategy is an improved version based on the smoothing and thresholding strategy, which contributes to improving the accuracy of segmentation. The proposed method performs the following steps. First, the colour set which can be determined by human or the K‐means method is specified. Second, a variational model to obtain the most appropriate colour for each pixel from the colour set via convex relaxation and lifting is used. The Chambolle–Pock algorithm and simplex projection are applied to solve the variational model effectively. Experimental results and comparison analysis demonstrate the effectiveness and robustness of the method.
url https://doi.org/10.1049/ipr2.12128
work_keys_str_mv AT tingtingwu colourimagesegmentationbasedonaconvexkmeansapproach
AT xiaoyugu colourimagesegmentationbasedonaconvexkmeansapproach
AT jinboshao colourimagesegmentationbasedonaconvexkmeansapproach
AT ruoxuanzhou colourimagesegmentationbasedonaconvexkmeansapproach
AT zhili colourimagesegmentationbasedonaconvexkmeansapproach
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