Design on Intelligent Video Surveillance System Based on Target Identification Algorithm

Article Preview

Abstract:

This paper makes study on the adjacent frame difference and algorithm realization of SOM i8dentification after improvement, of which it includes motion detection, target identification; the realized video surveillance module makes up the intelligent video surveillance that can reconstruct platform. Motion detection module adopts algorithm of adjacent frame difference after improvement, which can correctly mark the motion object. Target identification module adopts self-mapping nerve net after improvement, it is easier for hardware realization, and meanwhile the accuracy rate of identification is equal to classical algorithm.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

460-465

Citation:

Online since:

January 2015

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2015 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Hou Honglu etc. One Kind of Intelligent Video Surveillance System Based on Motion Object [J]. Automation of Arm Industry, 2012, 31(3): 5~9.

Google Scholar

[2] Yuan Guowu. Detection of Motion Object and Tracking Algorithm Study in Intelligent Video Surveillance [D]. Kunming: Yunnan University, (2012).

Google Scholar

[3] Zhang Hongying, Li Hong, Sun Yigang. Shadow Removal Algorithm Based on Mixed Gaussian model [J]. Computer Application, 2013, 33(1): 31-34.

DOI: 10.3724/sp.j.1087.2013.00031

Google Scholar

[4] Zhang Xia. Shadow Removal Method of Motion Object in Video Image [J]. Computer Engineering and Application, (2012).

Google Scholar

[5] Zhi Min. Video Inage Detection and Tracking Based on Meanshift [J]. Journal of Shenyang Normal University (natural science version), 2012, 3(4): 515-518.

Google Scholar

[6] Sang Yunchang, Gao Yun, Jiang Jie etc. Technology Development and Application of Future Intelligent Video Surveillance. Automation and instrument, 2012, (5): 109-111.

Google Scholar

[7] Yao Fangwu. Meanshift Tracking Algorithm Based on Target Centorid [J]. Computer Technology and Development, 2012, 22(6): 104-110.

Google Scholar

[8] Zhao Qian etc. TV Technology of Target Tracking and Convergence Based on Color Space Characteristic of YUV , 2013, 37(9): 187-191.

Google Scholar

[9] Li Yingtao. Intelligent Video Surveillance Technology and Application Study [D]. Wuhan: Wuhan University Of Technology, (2011).

Google Scholar