Abstract
Target tracking is one of the pivotal technologies in intelligent video surveillance systems. Facing the complex and various scenarios in practical applications, improving the accuracy and real-time of target detection and tracking is has become the goal of current monitoring systems. Firstly, the target feature expression model is established by fusing Sobel Median Binary Pattern (SMBP) and H-S features while the final target probability model is set up by a weighted color kernel function histogram. Secondly, the final target probability model is established by fusing a weighted color kernel function histogram. Thirdly, the improved unscented Kalman particle filtering algorithm proposed in this paper is embedded in the target tracking framework to complete the target tracking. Lastly, compared with the traditional tracking algorithm, the experiments results show that the target tracking algorithm proposed in this paper improves the tracking accuracy by about 4%.










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References
Akhtar and Jahanzeb (2015) Particle tracking using the unscented Kalman filter in high energy physics experiments
Berestycki N, Webb C, Mo DW (2017) Random Hermitian matrices and Gaussian multiplicative chaos. Probab Theory Relat Fields (2):1–87
Chen J, He Y, Wang J (2010) Multi-feature fusion based fast video flame detection. Build Environ 45(5):1113–1122
Daum, F. Particle degeneracy: root cause and solution. SPIE Def Sec Sens. 2011
Doucet A, Johansen AM (2011) A tutorial on particle filtering and smoothing: fifteen years later. Handbook of Nonlinear Filtering: 12
Hou YM et al (2012) Research on Kalman particle filter-based tracking algorithm. Adv Mater Res 461:571–574
Huang M et al (2015) Content-based image retrieval technology using multi-feature fusion. Optik - Int J Light Electron Optics 126(19):2144–2148
Israni S, Jain S (2016) Edge detection of license plate using Sobel operator. Int Conf Elect Electron Optim Tech
Jafarzadeh S, Lascu C, Fadali MS (2012) State estimation of induction motor drives using the unscented Kalman filter. IEEE Trans Ind Electron 59(11):4207–4216
Khattak AJ (2017) Integrating big data in metropolitan regions to understand driving volatility and implications for intelligent transportation systems. Springer International Publishing, Cham
Kumar DN, Kumari BL (2017) Performance analysis of estimators using PSO for multi-target tracking. 2017 6th Int Conf Reliab Infocom Technol Optim (Trends Future Direct) (ICRITO)
Lutfy OF (2014) Wavelet neural network model reference adaptive control trained by a modified artificial immune algorithm to control nonlinear systems. Arab J Sci Eng 39(6):4737–4751
Menegaz HMT et al (2015) A systematization of the unscented Kalman filter theory. IEEE Trans Autom Control 60(10):2583–2598
Miao Q et al (2013) Remaining useful life prediction of lithium-ion battery with unscented particle filter technique. Microelectron Reliab 53(6):805–810
Milan A, Schindler K, Roth S (2016) Multi-target tracking by discrete-continuous energy minimization. IEEE Trans Pattern Anal Mach Intell 38(10):2054–2068
Min K, Guo-Hong W, Jing B (2006) Research on target tracking technology of OTHR based on MPDA. 2006 CIE Int Conf Radar
Min Z, Jia HT, Zhen S (2015) Improved resampling procedure based on genetic algorithm in particle filter. J Univ Electr Sci Technol Chin 44(3):344–349
Murangira A et al. (2011) Robust regularized particle filter for terrain navigation. Proc Int Conf Inform Fusion
Okuma K et al. (2004) A boosted particle filter: multitarget detection and tracking. Eur Conf Comput Vision
Poteralski A (2014) Optimization of mechanical structures using artificial immune algorithm. Springer International Publishing
Saracen M, West J (2007) Treatment target positioning system, US: 28
Suzuki H (2013) Dynamic state estimation in vehicle platoon system by applying particle filter and unscented Kalman filter ☆. Proc Comput Sci 24:30–41
Uysal MS, Beecks C, Seidl T (2015) On efficient content-based near-duplicate video detection. 2015 13th Int Workshop Content-based Multimed Index (CBMI)
Vaccarella A et al (2013) Unscented Kalman filter based sensor fusion for robust optical and electromagnetic tracking in surgical navigation. IEEE Trans Instrum Measure 62(7):2067–2081
Van Trees H, Bell K (2007) A tutorial on particle filters for online nonlinear/nongaussian bayesian tracking. Wiley-IEEE press. 723–737
Wang J, Yu N (2015) Multi-target tracking via max-entropy target selection and heterogeneous camera fusion. Springer International Publishing, Cham
Wang Y et al. (2016) Research on technology of twin image recognition based on the multi-feature fusion. Int Conf Young Comput Sci Eng Educ
Xia G, Ludwig SA (2016) Object-tracking based on particle filter using particle swarm optimization with density estimation. Evol Comput
Yadav K et al. (2015) Content-driven multi-modal techniques for non-linear video navigation. Proc 20th Int Conf Intell User Interf, ACM: Atlanta, Georgia, USA: 333–344
Yura Y et al (2014) Rapid detection of the switching point in a financial market structure using the particle filter. J Stat Comput Simul 84(10):2073–2090
Zhou Z et al. (2014) Object tracking based on Camshift with multi-feature fusion. J Softw 9(1)
Zhou C et al (2015) PE-TLD: parallel extended tracking-learning-detection for multi-target tracking. Springer International Publishing, Cham
Zhu Q et al (2014) Crowd target positioning under multiple cameras based on block correspondence. Springer International Publishing, Cham
Funding
This work was supported by the National Key Research and Development Program of China (No. 2018YFC0810204), National Natural Science Foundation of China (No.61502220), Shanghai Science and Technology Innovation Action Plan Project (16111107502, 17511107203) and Shanghai key lab of modern optical system.
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Zhang, N., Wu, C., Wu, Y. et al. An improved target tracking algorithm and its application in intelligent video surveillance system. Multimed Tools Appl 79, 15965–15983 (2020). https://doi.org/10.1007/s11042-018-6871-y
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DOI: https://doi.org/10.1007/s11042-018-6871-y