Journal of Engineering and Applied Sciences
Year:
2018
Volume:
13
Issue:
4 SI
Page No.
3817 - 3825
References
Bai, Y. and M. Tang, 2012. Robust tracking via weakly supervised ranking SVM. Proceedings of the 2012 IEEE Conference on Computer Vision and Pattern Recognition (CVPR’12), June 16-21, 2012, IEEE, Providence, Rhode Island, USA., ISBN:978-1-4673-1226-4, pp: 1854-1861.
Cannons, K., 2008. A review of visual tracking. Technical Report CSE-2008-07, Department of Computer Science & Engineering, New York University, New York, USA. http://www.eecs.yorku.ca/research/techreports/2008/CSE-2008-07.pdf
Chen, W., K. Zhang and Q. Liu, 2016. Robust visual tracking via patch based kernel correlation filters with adaptive multiple feature ensemble. Neurocomput., 214: 607-617.
CrossRef | Direct Link | Comaniciu, D., V. Ramesh and P. Meer, 2003. Kernel-based object tracking. IEEE. Trans. Pattern Anal. Mach. Intell., 25: 564-577.
CrossRef | Direct Link | Crouse, D.F., 2015. A general solution to optimal fixed-gain (α-β-γ etc.) filters. IEEE. Sig. Process. Lett., 22: 901-904.
CrossRef | Direct Link | Fourie, J., S. Mills and R. Green, 2010. Harmony filter: A robust visual tracking system using the improved harmony search algorithm. Image Vision Comput., 28: 1702-1716.
CrossRef | Gao, M.L., J. Shen, L.J. Yin, W. Liu and G.F. Zou
et al., 2016. A novel visual tracking method using bat algorithm. Neurocomput., 177: 612-619.
Direct Link | Gao, M.L., L.J. Yin, G.F. Zou, H.T. Li and W. Liu, 2015. Visual tracking method based on cuckoo search algorithm. Opt. Eng., 54: 073105-073105.
CrossRef | Direct Link | Gao, M.L., X. He, D. Luo and Y.M. Yu, 2012. Object tracking based on harmony search: Comparative study. J. Electron. Imaging, 21: 043001-043001.
CrossRef | Direct Link | Gao, M.L., X.H. He, D.S. Luo, J. Jiang and Q.Z. Teng, 2013. Object tracking using firefly algorithm. IET. Comput. Vis., 7: 227-237.
CrossRef | Direct Link | Hare, S., S. Golodetz, A. Saffari, V. Vineet and M.M. Cheng
et al., 2016. Struck: Structured output tracking with kernels. IEEE. Trans. Pattern Anal. Mach. Intell., 38: 2096-2109.
CrossRef | PubMed | Direct Link | Kalman, R.E., 1960. A new approach to linear filtering and prediction. Trans. ASME J. Basic Eng., 82: 35-45.
Direct Link | Kennedy, J. and R.C. Eberhart, 1997. A discrete binary version of the particle swarm algorithm. Proceedings of the 1997 IEEE International Conference on Systems, Man and Cybernetics Computational Cybernetics and Simulation Vol. 5, October 12-15, 1997, IEEE, Orlando, Florida, ISBN:0-7803-4053-1, pp: 4104-4108.
Mirjalili, S., S.M. Mirjalili and X.S. Yang, 2014. Binary bat algorithm. Neural Comput. Applic., 25: 663-681.
CrossRef | Direct Link | Rashedi, E., H. Nezamabadi-Pour and S. Saryazdi, 2010. BGSA: Binary gravitational search algorithm. Nat. Comput., 9: 727-745.
CrossRef | Simon, D., 2010. Kalman filtering with state constraints: A survey of linear and nonlinear algorithms. IET Control Theory Appl., 4: 1303-1318.
CrossRef | Sokhandan, A. and A. Monadjemi, 2016. A novel biologically inspired computational framework for visual tracking task. Biol. Inspired Cognit. Archit., 18: 68-79.
Direct Link | Wu, Y., J. Lim and M.H. Yang, 2015. Object tracking benchmark. IEEE. Trans. Pattern Anal. Mach. Intell., 37: 1834-1848.
CrossRef | PubMed | Direct Link | Yang, M., Z. Fan, J. Fan and Y. Wu, 2009. Tracking nonstationary visual appearances by data-driven adaptation. IEEE. Trans. Image Process., 18: 1633-1644.
CrossRef | PubMed | Direct Link | Yang, X.S., 2010. A New Metaheuristic Bat-Inspired Algorithm. In: Nature Inspired Cooperative Strategies for Optimization (NICSO 2010), Gonzalez, J.R., D.A. Pelta, C. Cruz, G. Terrazas and N. Krasnogor (Eds.). Springer, Berlin, Germany, ISBN:978-3-642-12537-9, pp: 65-74.
Yi, S., N. Jiang, B. Feng, X. Wang and W. Liu, 2016. Online similarity learning for visual tracking. Inf. Sci., 364: 33-50.
CrossRef | Direct Link | Yilmaz, A., O. Javed and M. Shah, 2006. Object tracking: A survey. ACM Comput. Surv., Vol. 38. 10.1145/1177352.1177355
Zhang, K., L. Zhang and M.H. Yang, 2014. Fast compressive tracking. IEEE. Trans. Pattern Anal. Mach. Intell., 36: 2002-2015.
CrossRef | Direct Link | Zhang, X., W. Hu, S. Maybank, X. Li and M. Zhu, 2008. Sequential particle swarm optimization for visual tracking. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR’08), June 23-28, 2008, IEEE, Anchorage, Alaska, ISBN: 978-1-4244-2242-5, pp: 1-8.
Zhou, H., Y. Yuan and C. Shi, 2009. Object tracking using SIFT features and mean shift. Comput. Vis. Image Understanding, 113: 345-352.
Direct Link |