An image segmentation method using automatic threshold based on improved genetic selecting algorithm
- 作者: Wang Z.1, Wang Y.2, Jiang L.1,3, Zhang C.4, Wang P.5
-
隶属关系:
- College of Computer Science and Communication Engineering
- Institute of Automobile and Traffic Engineering
- Guangxi Experiment Center of Information Science
- School of Computer Science and Information Technology
- College of Electrical and Information Engineering
- 期: 卷 50, 编号 6 (2016)
- 页面: 432-440
- 栏目: Article
- URL: https://journals.rcsi.science/0146-4116/article/view/174485
- DOI: https://doi.org/10.3103/S0146411616060092
- ID: 174485
如何引用文章
详细
In this paper, an image segmentation method using automatic threshold based on improved genetic selecting algorithm is presented. Optimal threshold for image segmentation is converted into an optimization problem in this new method. In order to achieve good effects for image segmentation, the optimal threshold is solved by using optimizing efficiency of improved genetic selecting algorithm that can achieve a global optimum. The genetic selecting algorithm is optimized by using simulated annealing temperature parameters to achieve appropriate selective pressures. Encoding, crossover, mutation operator and other parameters of genetic selecting algorithm are improved moderately in this method. It can overcome the shortcomings of the existing image segmentation methods, which only consider pixel gray value without considering spatial features and large computational complexity of these algorithms. Experiment results show that the new algorithm greatly reduces the optimization time, enhances the anti-noise performance of image segmentation, and improves the efficiency of image segmentation. Experimental results also show that the new algorithm can get better segmentation effect than that of Otsu’s method when the gray-level distribution of the background follows normal distribution approximately, and the target region is less than the background region. Therefore, the new method can facilitate subsequent processing for computer vision, and can be applied to realtime image segmentation.
作者简介
Zhiwen Wang
College of Computer Science and Communication Engineering
编辑信件的主要联系方式.
Email: wzw69@126.com
中国, Liuzhou, 545006
Yuhang Wang
Institute of Automobile and Traffic Engineering
Email: wzw69@126.com
中国, Guilin, 541004
Lianyuan Jiang
College of Computer Science and Communication Engineering; Guangxi Experiment Center of Information Science
Email: wzw69@126.com
中国, Liuzhou, 545006; Guilin, 541004
Canlong Zhang
School of Computer Science and Information Technology
Email: wzw69@126.com
中国, Guilin, 541004
Pengtao Wang
College of Electrical and Information Engineering
Email: wzw69@126.com
中国, Liuzhou, 545006
补充文件
