Tracking Target Identification Model Based on Multiple Algorithms

Article Preview

Abstract:

In view of current situation of bad data synchronization, image blurring and tracking station stability in tracking target identification, a kind of tracking target identification model based on multiple algorithms was put forward, firstly establishing the image degradation model, using the wavelet algorithm for image preprocessing, doing image edge segmentation by using Robert algorithm after pretreatment, then using the maximum variance threshold method for image threshold segmentation, then extracting target features from the segmented image, and finally using the ABS algorithm to finish target tracking. Experiments proved the proposed model practical and effective.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

106-112

Citation:

Online since:

July 2014

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Dickmanns E. D, The development of machine vision for road vehicles in the last decade, IEEE Intelligent Vehicle Symposium (2006)268-281.

DOI: 10.1109/ivs.2002.1187962

Google Scholar

[2] Fleischer K, Machine-vision-based detection and tracking of stationary infrastructural objects beside inner-city roads, IEEE Proceedings, Intelligent transportation Systems(2001)525-530.

DOI: 10.1109/itsc.2001.948713

Google Scholar

[3] Li Zhaohui, Yu Yinglin, An Algorithm of Automatic Video Text Locating, Tracking and Recognition, Journal of Image and Graphics 10(2005)457-462.

Google Scholar

[4] Wang Wenhui, Lou Shengqiang, Wan Jianwei, A nonlinear adaptive filtering algorithm for color images, Computer Engineering &Science23(2001)18-20.

Google Scholar

[5] Lin Xiaoshun, Li Cunzhi, A new method of infrared imagery enhancement based on image confusion, Journal of Xidian University32(2005)189-192.

Google Scholar

[6] Guo Ping, Lu Hanqing, A Study on Bayesian Probabilistic Image Automatic Segmentation, Acta Optica Sinica22(2002)1479-1483.

Google Scholar

[7] Li Juntao, Zhang Hai, A detection algorithm for moving targets in complex scenes, Opto-electronic Engineering31(2004)36-39.

Google Scholar

[8] Zhao Peng, Pu Zhaobang, Zhang Tianwen, A New Tracking Method of Dynamic Contour Based on Image Fusion, Acta Optica Sinica25(2005)760-766.

Google Scholar

[9] Zheng Nanning, Liu Jianqin, An Adaptive Approach to Image Segmentation Based on Region Features, Acta Electronica Sinica7(2005) 364-378.

Google Scholar

[10] Ye Luoyun, Fast binaryzation of text image, Journal of Infrared and Millimeter Waves16(1997)344-350.

Google Scholar