Color image segmentation using multi-objective swarm optimizer and multi-level histogram thresholding

被引:0
作者
Mohammad Reza Naderi Boldaji
Samaneh Hosseini Semnani
机构
[1] Isfahan University of Technology,Department of Electrical and Computer Engineering
[2] Isfahan University of Technology,Department of Electrical and Computer Engineering
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
Image segmentation; Multi-level thresholding; Multi-objective swarm optimizers; 3D histogram;
D O I
暂无
中图分类号
学科分类号
摘要
Rapid developments in swarm intelligence optimizers and computer processing abilities make opportunities to design more accurate, stable, and comprehensive methods for color image segmentation. This paper presents a new way for unsupervised image segmentation by combining histogram thresholding methods (Kapur’s entropy and Otsu’s method) and different multi-objective swarm intelligence algorithms (MOPSO, MOGWO, MSSA, and MOALO) to thresholding 3D histogram of a color image. More precisely, this method first combines the objective function of traditional thresholding algorithms to design comprehensive objective functions then uses multi-objective optimizers to find the best thresholds during the optimization of designed objective functions. Also, our method uses a vector objective function in 3D space that could simultaneously handle the segmentation of entire image color channels with the same thresholds. To optimize this vector objective function, we employ multi-objective swarm optimizers that can optimize multiple objective functions at the same time. Therefore, our method considers dependencies between channels to find the thresholds that satisfy objective functions of color channels (which we name as vector objective function) simultaneously. Segmenting entire color channels with the same thresholds also benefits from the fact that our proposed method needs fewer thresholds to segment the image than other thresholding algorithms; thus, it requires less memory space to save thresholds. It helps a lot when we want to segment many images to many regions. The subjective and objective results show the superiority of this method to traditional thresholding methods that separately threshold histograms of a color image.
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收藏
页码:30647 / 30661
页数:14
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