Subscribe Now Subscribe Today
Science Alert
 
FOLLOW US:     Facebook     Twitter
Blue
   
Curve Top
Journal of Software Engineering
  Year: 2014 | Volume: 8 | Issue: 4 | Page No.: 399-408
DOI: 10.3923/jse.2014.399.408
Image Segmentation Using Automatic Selected Threshold Method Based on Improved Genetic Algorithm
Gong Kun Luo

Abstract:
In this study, an image segmentation using automatic selected threshold method based on improved genetic algorithm is presented. It can overcome the shortcomings of the existing image segmentation methods which only consider pixel gray value without considering spatial features and computational complexity of these algorithms is too large. Encoding, crossover, mutation operator and other parameters of genetic algorithm are improved moderately in this method. Optimal threshold for image segmentation is converted into an optimization problem in this new method. The selection algorithm is optimized by using simulated annealing temperature parameters to achieve selective pressures. In order to achieve image segmentation, the optimal threshold is solved by using optimizing efficiency of improved genetic algorithm. Simulation results show that the new algorithm greatly reduces the optimization time and enhances the anti-noise performance of image segmentation and improves the efficiency of image segmentation. Thus, the new method can facilitate subsequent processing for computer vision and can be applied to real-time image segmentation.
 [Fulltext PDF]   [Fulltext HTML]   [XML: Abstract + References]   [References]   [View Citation]  [Report Citation]
 RELATED ARTICLES:
  •    Face Recognition using Skin Color Segmentation and Template Matching Algorithms
How to cite this article:

Gong Kun Luo , 2014. Image Segmentation Using Automatic Selected Threshold Method Based on Improved Genetic Algorithm. Journal of Software Engineering, 8: 399-408.

DOI: 10.3923/jse.2014.399.408

URL: https://scialert.net/abstract/?doi=jse.2014.399.408

 
COMMENT ON THIS PAPER
.
 
 
 
 

 

 
 
 
 
 
 
 
 
 

 
 
 
 
 

Curve Bottom