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联合Mean-shift与粒子滤波器的实时视频目标跟踪算法及实现 被引量:2

A Real-time Video Target Tracking Algorithm and Its Implementation Combining Mean-shift and Particle Filter
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摘要 粒子滤波器由于摆脱了高斯分布的约束条件,已经成为一种主流的、面向目标的非线性运动跟踪算法,广泛应用于视频压缩与检索、智能视频监控、智能人机交互等领域,其缺点是计算复杂度高、计算量庞大,无法满足实时应用的需求。针对粒子滤波器在计算量、实时性及粒子退化方面存在的问题,提出了将Mean-shift算法嵌入粒子滤波器,对重要性采样分布进行优化,以较少的采样粒子实现视频目标跟踪。仿真实验结果显示,联合Mean-shift的粒子滤波算法在目标跟踪过程中具有较好的实时性与鲁棒性。 Due to get rid of the constraint condition of Gauss distribution, particle filter has become a mainstream, target-oriented nonlinear motion tracking algorithm, widely used in video compression amt retrieval, intelligent video surveillance, intelligent human-computer interaction and other areas, the drawback is the high computational complexity and huge amount of computation, can not meet the needs of real-time applications. In this paper, the problem of particle fiher in computational complexity, real- time and particle degradation is proposed. The Mean-shift algorithm is embedded in the particle filter, amt the importance sam- piing distribution is optimized. Video target tracking is achieved with less sampling particles. The simulation results show that the joint Mean-shift particle filter algorithm has good real - time and robustness in the process of target tracking.
作者 王丹玲
出处 《盐城工学院学报(自然科学版)》 CAS 2017年第1期24-27,共4页 Journal of Yancheng Institute of Technology:Natural Science Edition
基金 辽宁省自然科学基金(2013020228)
关键词 视频跟踪 粒子滤波器 MEAN-SHIFT MARKOV Chain MONTE Carlo 重采样 video tracking particle filter mean-shift Markov Chain Monte Carlo resampling
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  • 1Doucet A,Godsill S,Andrieu C.On sequential Monte Carlo sampiing methods for Bayesian Filter[J].Statistics and Computing, 2000,10(3): 197-208.
  • 2Gustafsson F, Gunnarsson F, Bergman N,et al.Particle filters for positioning, navigation, and tracking [J]. IEEE Transactions on Signal Processing,2002,50:425-435.
  • 3Haykin S,Huber K,Zhe Chen.Bayesian sequential state estimation for MIMO wireless communications[C].Proceedings of the IEEE,2004:439-454.
  • 4Huang A J.A tutorial on bayesian estimation and tracking techniques applicable to non-linear and non-Gaussian process [R]. MITRE Technique Report,2005.
  • 5Gordon, Salmond D J,Smith AFM.Novel approach to nonlinear/ non-Gaussian Bayesian state estimation[J].IEEE Proceedings F, Radar and Signal Processing, 1993,140(2): 107-113.
  • 6Michael J Quirm. Parallel Programming in C with MPI and OpenMP[M].北京:清华大学出版社,2004.
  • 7Joaquin Miguez. Analysis of parallelizable resampling algorithms for particle filtering[J].IEEE Transactions on Signal Processing,2007,87:3155-3174.
  • 8[1]Fukanaga K, Hostetler LD. The estimation of the gradient of a density function, with applications in pattern recognition. IEEE Trans. on Information Theory, 1975,21(1):32-40.
  • 9[2]Cheng Y. Mean shift, mode seeking and clustering. IEEE Trans. on Pattern Analysis and Machine Intelligence, 1995,17(8):790-799.
  • 10[3]Comaniciu D, Ramesh V, Meer P. Real-Time tracking of non-rigid objects using mean shift. In: Werner B, ed. IEEE Int'l Proc. of the Computer Vision and Pattern Recognition, Vol 2. Stoughton: Printing House, 2000. 142-149.

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