DocumentCode
2660173
Title
A fast self-adapt target image segmentation algorithm
Author
Jun, Sun
Author_Institution
Key Lab. of Modern Agric. Equip. & Technol., Jiangsu Univ., Zhenjiang
fYear
2008
fDate
16-18 July 2008
Firstpage
500
Lastpage
504
Abstract
On the base of 2D maximum between-cluster variance algorithm, a fast self-adapt target image segmentation algorithm is brought forward. The algorithm utilizes not only the gray level information of each pixel and its spatial correlation information within the neighborhood, but also the dimension of neighborhood domain. Because the traditional 2D maximum between-cluster variance algorithm spends a lot of time on circulating operation and because genetic algorithm can search best value in the whole field, the mix-genetic algorithm is put into the image segmentation algorithm in which the gray level, neighborhood dimension and average value are encoded. This method can quicken the speed of producing the best threshold value, improve greatly the performance of the methods. The experiment results show that the self-adapt image segmentation algorithm spends more short time on running and has better segmentation effect than the traditional algorithm, so the self-adapt segmentation algorithm has the image real-time segmentation application merit.
Keywords
genetic algorithms; image segmentation; 2D maximum between-cluster variance algorithm; genetic algorithm; image thresholding; self-adapt target image segmentation algorithm; spatial correlation information; Agricultural engineering; Control engineering education; Educational technology; Genetic algorithms; Histograms; Image segmentation; Laboratories; Pixel; Signal to noise ratio; Sun; 2D maximum between-cluster variance; Image segmentation; Mix-genetic algorithm;
fLanguage
English
Publisher
ieee
Conference_Titel
Control Conference, 2008. CCC 2008. 27th Chinese
Conference_Location
Kunming
Print_ISBN
978-7-900719-70-6
Electronic_ISBN
978-7-900719-70-6
Type
conf
DOI
10.1109/CHICC.2008.4605154
Filename
4605154
Link To Document