Research on Video Processing System Based on Artificial Fish Swarm Algorithm

Article Preview

Abstract:

This paper uses a new intelligent computational method-artificial fish swarm algorithm to have applications of the image in the video processing. Based on the understanding and analysis of artificial fish swarm algorithm, and it will be applied to video image processing to enhance the technical, its algorithm is designed at the same time. Initial conditions and termination conditions can be determined according to the specific video image problem in the design process. And then it can enhance the video image gray contrast in video image process by using the adaptive conversion, this can improve the effectiveness and quality of the image,. The experimental comparison results show that the artificial fish swarm algorithm can be used as a simple, fast and effective way in video processing system.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

909-913

Citation:

Online since:

November 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2012 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Song Zhiyu, Li Junjie, Wang Hongyu. Chaos Artificial Fish Swarm Algorithm gravity dam material parameter [J]. Rock and Soil Mechanics, 2007, 28 (10): 79-80.

Google Scholar

[2] Cheng Xiaorong, Zhang Qiuliang, Wang Zhihui. Planning based on artificial fish swarm algorithm with power grid optimization [J]. Relay, 2007, 35 (21): 25-26.

Google Scholar

[3] Gao Defang, Zhao Yong, Guo Yang. Mixed fish - the ant colony algorithm-based modular product configuration design [J]. Design and Research, 2007, 34 (1) : 7-10.

Google Scholar

[4] Duan Haibin. The principle of ant colony algorithm and its application [M] Beijing: Science Press, 2005: 11-12.

Google Scholar

[5] Chang Qing, Wang Li, Xing Chao. Selected image thresholding based on genetic algorithm [J]. Computer Engineering and Applications, 2012(2): 35 -37.

Google Scholar

[6] Chen Guo. Image segmentation based on Fisher criterion function method[J]. Journal of Scientific Instrument, 2010, 24(6): 57-58.

Google Scholar

[7] Liu Jianping. Two-dimensional maximum between-class variance and genetic algorithm in infrared image segmentation [J]. Zhejiang University of Technology, 2005, 22 (4): 75-76.

Google Scholar

[8] Yang Tian, Li Defang. Grayscale images dimensional Otsu automatic threshold segmentation [J]. Southwest China Normal University (Natural Science), 2010, 23 (6): 58-59.

Google Scholar

[9] Bi Weihong, Ren Hongmin, Wu Qingbiao. A new genetic algorithm for optimal preservation strategies [J]. Journal of Zhejiang University (Science Edition), 2006, 33 (1): 32-33.

Google Scholar