FLIC: Fast linear iterative clustering with active search

Abstract In this paper, we reconsider the clustering problem for image over-segmentation from a new perspective. We propose a novel search algorithm called “active search” which explicitly considers neighbor continuity. Based on this search method, we design a back-and-forth traversal strategy and a...

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Main Authors: Jiaxing Zhao, Ren Bo, Qibin Hou, Ming-Ming Cheng, Paul Rosin
Format: Article
Language:English
Published: SpringerOpen 2018-10-01
Series:Computational Visual Media
Subjects:
Online Access:http://link.springer.com/article/10.1007/s41095-018-0123-y
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spelling doaj-e85281e7202e4c2dabc528e3220071b52020-11-24T21:37:02ZengSpringerOpenComputational Visual Media2096-04332096-06622018-10-014433334810.1007/s41095-018-0123-yFLIC: Fast linear iterative clustering with active searchJiaxing Zhao0Ren Bo1Qibin Hou2Ming-Ming Cheng3Paul Rosin4Nankai UniversityNankai UniversityNankai UniversityNankai UniversityCardiff UniversityAbstract In this paper, we reconsider the clustering problem for image over-segmentation from a new perspective. We propose a novel search algorithm called “active search” which explicitly considers neighbor continuity. Based on this search method, we design a back-and-forth traversal strategy and a joint assignment and update step to speed up the algorithm. Compared to earlier methods, such as simple linear iterative clustering (SLIC) and its variants, which use fixed search regions and perform the assignment and the update steps separately, our novel scheme reduces the number of iterations required for convergence, and also provides better boundaries in the over-segmentation results. Extensive evaluation using the Berkeley segmentation benchmark verifies that our method outperforms competing methods under various evaluation metrics. In particular, our method is fastest, achieving approximately 30 fps for a 481 × 321 image on a single CPU core. To facilitate further research, our code is made publicly available.http://link.springer.com/article/10.1007/s41095-018-0123-yimage over-segmentationSLICneighbor continuityback-and-forth traversal
collection DOAJ
language English
format Article
sources DOAJ
author Jiaxing Zhao
Ren Bo
Qibin Hou
Ming-Ming Cheng
Paul Rosin
spellingShingle Jiaxing Zhao
Ren Bo
Qibin Hou
Ming-Ming Cheng
Paul Rosin
FLIC: Fast linear iterative clustering with active search
Computational Visual Media
image over-segmentation
SLIC
neighbor continuity
back-and-forth traversal
author_facet Jiaxing Zhao
Ren Bo
Qibin Hou
Ming-Ming Cheng
Paul Rosin
author_sort Jiaxing Zhao
title FLIC: Fast linear iterative clustering with active search
title_short FLIC: Fast linear iterative clustering with active search
title_full FLIC: Fast linear iterative clustering with active search
title_fullStr FLIC: Fast linear iterative clustering with active search
title_full_unstemmed FLIC: Fast linear iterative clustering with active search
title_sort flic: fast linear iterative clustering with active search
publisher SpringerOpen
series Computational Visual Media
issn 2096-0433
2096-0662
publishDate 2018-10-01
description Abstract In this paper, we reconsider the clustering problem for image over-segmentation from a new perspective. We propose a novel search algorithm called “active search” which explicitly considers neighbor continuity. Based on this search method, we design a back-and-forth traversal strategy and a joint assignment and update step to speed up the algorithm. Compared to earlier methods, such as simple linear iterative clustering (SLIC) and its variants, which use fixed search regions and perform the assignment and the update steps separately, our novel scheme reduces the number of iterations required for convergence, and also provides better boundaries in the over-segmentation results. Extensive evaluation using the Berkeley segmentation benchmark verifies that our method outperforms competing methods under various evaluation metrics. In particular, our method is fastest, achieving approximately 30 fps for a 481 × 321 image on a single CPU core. To facilitate further research, our code is made publicly available.
topic image over-segmentation
SLIC
neighbor continuity
back-and-forth traversal
url http://link.springer.com/article/10.1007/s41095-018-0123-y
work_keys_str_mv AT jiaxingzhao flicfastlineariterativeclusteringwithactivesearch
AT renbo flicfastlineariterativeclusteringwithactivesearch
AT qibinhou flicfastlineariterativeclusteringwithactivesearch
AT mingmingcheng flicfastlineariterativeclusteringwithactivesearch
AT paulrosin flicfastlineariterativeclusteringwithactivesearch
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