Science and Technology Research in Universities of Hebei Province (No.BJ2018029);Key Program of Department of Education of Hebei Province (No.ZD2018212);Doctoral Research Fund of Hebei GEO University (No.BQ201606)
ZHU Zhan-long, LIU Yong-jun. A Novel Algorithm by Incorporating Chaos Optimization and Improved Fuzzy C-Means for Image Segmentation[J]. Acta Electronica Sinica, 2020, 48(5): 975-984.
DOI:
ZHU Zhan-long, LIU Yong-jun. A Novel Algorithm by Incorporating Chaos Optimization and Improved Fuzzy C-Means for Image Segmentation[J]. Acta Electronica Sinica, 2020, 48(5): 975-984. DOI: 10.3969/j.issn.0372-2112.2020.05.019.
A Novel Algorithm by Incorporating Chaos Optimization and Improved Fuzzy C-Means for Image Segmentation
The spatial generalized fuzzy c-means clustering algorithm (GFCM_S) is a popular technique for image segmentation
but it is not so effective when the image has the features of unequal cluster sizes or the initial cluster centers we choose are improper. In this paper
for solving the above shortcomings of GFCM_S
a novel algorithm incorporating chaos optimization and improved fuzzy c-means (CIGFCM_S) is proposed. Firstly
each size of clusters is integrated into the objective function of GFCM_S so as to equalize the contribution of larger and smaller clusters to the objective function. Secondly
the iteratively membership degree and cluster centers are deduced by the Lagrange multiplier method. Thirdly
a new iterative strategy is used to seek the optimal solutions. In detail
the optimal solutions of next generation are searched by two-paths
one path originates chaos optimization and the other is obtained by updating membership degree and cluster centers on the basis of current optimal solutions
and then the better solutions go to next generation until the end. Lastly
the non-destructive testing (NDT) images with the characters of unequal cluster sizes are used for experiments
the results show that the proposed algorithm has better segmentation accuracy and visual effects.