A comprehensive survey of image segmentation: clustering methods, performance parameters, and benchmark datasets

被引:0
作者
Himanshu Mittal
Avinash Chandra Pandey
Mukesh Saraswat
Sumit Kumar
Raju Pal
Garv Modwel
机构
[1] Jaypee Institute of Information Technology,
[2] Amity University,undefined
[3] Valeo India Private Limited,undefined
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
Image segmentation; Clustering methods; Performance parameters; Benchmark datasets;
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中图分类号
学科分类号
摘要
Image segmentation is an essential phase of computer vision in which useful information is extracted from an image that can range from finding objects while moving across a room to detect abnormalities in a medical image. As image pixels are generally unlabelled, the commonly used approach for the same is clustering. This paper reviews various existing clustering based image segmentation methods. Two main clustering methods have been surveyed, namely hierarchical and partitional based clustering methods. As partitional clustering is computationally better, further study is done in the perspective of methods belonging to this class. Further, literature bifurcates the partitional based clustering methods into three categories, namely K-means based methods, histogram-based methods, and meta-heuristic based methods. The survey of various performance parameters for the quantitative evaluation of segmentation results is also included. Further, the publicly available benchmark datasets for image-segmentation are briefed.
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页码:35001 / 35026
页数:25
相关论文
共 124 条
  • [1] Abutaleb AS(1989)Automatic thresholding of gray-level pictures using two-dimensional entropy Comput Vision Graphics Image Process 47 22-32
  • [2] Agustı L(2012)A new grouping genetic algorithm for clustering problems Expert Syst Appl 39 9695-9703
  • [3] Salcedo-Sanz S(1994)Clustering with evolution strategies Pattern Recognit 27 321-329
  • [4] Jiménez-Fernández S(2014)Spider monkey optimization algorithm for numerical optimization Memetic Comput 6 31-47
  • [5] Carro-Calvo L(2002)Evolution strategies–a comprehensive introduction Nat Comput 1 3-52
  • [6] Del Ser J(1973)Cluster validity with fuzzy sets J Cybern 3 58-73
  • [7] Portilla-Figueras JA(2015)Efficient agglomerative hierarchical clustering Expert Syst Appl 42 2785-2797
  • [8] Babu GP(2001)K-modes clustering J Classif 18 35-55
  • [9] Murty MN(2007)Divclus-t: A monothetic divisive hierarchical clustering method Comput Stat Data Anal 52 687-701
  • [10] Bansal JC(2011)Chaotic particle swarm optimization for data clustering Expert Syst Appl 38 14555-14563