期刊文献+

面向快速多目标跟踪的协同PHD滤波器 被引量:7

Collaborative PHD filter for fast multi-target tracking
下载PDF
导出
摘要 考虑到存活目标与新生目标在动态演化特性上的差异性,提出了面向快速多目标跟踪的协同概率假设密度(collaborative probability hypothesis density,CoPHD)滤波框架。该框架利用存活目标的状态信息,将量测动态划分为存活目标量测集与新生目标量测集,在两个量测集分别运用PHD组处理更新基础上建立了处理模块的交互与协同机制,力图在保证跟踪精度的同时提高计算效率。该框架由于采用PHD组处理方式而具有状态自动提取功能。进一步给出了该框架的序贯蒙特卡罗算法实现。仿真结果表明,该算法在计算效率以及状态提取精度上具有明显优势。 Considering the difference of dynamic evolution between the survival target and the newborn target,a collaborative probability hypothesis density (CoPHD)filter framework for fast multi-target tracking is proposed.The framework strives to improve the systematic implementing efficiency as well as guarantee the tracking accuracy by dynamically partitioning the measurement set into two parts,survival and newborn target measurement sets in which PHD groups are updated respectively,and constituting an interactive and collaborative mechanism for the processing modules.In addition,the framework has the ability of state self-extracting by utilizing PHD group processing,and the implementation via the sequential Monte Carlo (SMC)method is presented.Simulation results show that the proposed SMC-CoPHD filter has greatly-reduced computation cost and significantly-improved state-extracti on accuracy.
出处 《系统工程与电子技术》 EI CSCD 北大核心 2014年第11期2113-2121,共9页 Systems Engineering and Electronics
基金 国家自然科学基金(61374159 61135001 61374023 61203234) 航空科学基金(20125153027) 留金发[2012]3043号资助课题
关键词 多目标跟踪 概率假设密度滤波器 状态提取 交互 协同 序贯蒙特卡罗方法 multi-target tracking probability hypothesis density (PHD)filter state extraction interaction collaboration sequential Monte Carlo (SMC)method
  • 相关文献

参考文献40

  • 1Bar-Shalom Y. Tracking and data association[M]. San Diego, Academic Press, 1988.
  • 2&r-Shalom Y. Multitarget-multisensor tracking, principles and techniques [M]. Storrs, Yaakov Bar-Shalom Publishing, 1995.
  • 3Mahler R. Multi-target Bayes filtering via first-order multi-target moments [J]. IEEE Trans. on Aerospace and Electronic Systems, 2003, 39( 4) ,ll52 - ll78.
  • 4Mahler R. Statistical multisource multitarget information fusion [M]. Norwood, Artech House, 2007.
  • 5Vo B N, Singh S, Doucet A. Sequential Monte Carlo methods for multi-target filtering with random finite sets[J]. IEEE Trans. on Aerospace and Electronic Systems, 2005,41 (4) ,1224 - 1245.
  • 6VO B N, Ma W K. The Gaussian mixture probability hypothesis density filter[J]. IEEE Trans. on Signal Processing, 2006,54 (1) ,4091 - 4104.
  • 7Clark D E, Bell J. Convergence results for the particle PHD filter[J]. IEEE Trans. on Signal Processing, 2006, 54( 7) ,2652 - 2661.
  • 8Clark D E, Vo B N. Convergence analysis of the Gaussian mixture PHD filter[J]. IEEE Trans. on Signal Processing, 2007 , 55(4),1204 -1212.
  • 9Mahler R. PHD filters of higher order in target number[J]. IEEE Trans. on Aerospace and Electronic Systems, 2007,43 (4),1523 - 1543.
  • 10Clark DE, Bell J. Multi-target state estimation and track continuity for the particle PHD filter [J]. IEEE Trans. on Aerospace and Electronic Systems ,2007 ,43(4),1441 -1453.

二级参考文献160

  • 1田淑荣,王国宏,何友.多目标跟踪的概率假设密度粒子滤波[J].海军航空工程学院学报,2007,22(4):417-420. 被引量:10
  • 2曲长文,黄勇,苏峰.基于动态规划的多目标检测前跟踪算法[J].电子学报,2006,34(12):2138-2141. 被引量:27
  • 3Goodman I, Mahler R, Nguyen H. Mathematics of Data Fusion. Norwood: Kluwer Academic, 1997.
  • 4Mahler R. An Introduction to Multisource-Multitarget Statistics and Applications, Technical Report, Lockheed Martin Technical Monograph, USA, 2000.
  • 5Mahler R. Random set theory for target tracking and identification. Data Fusion Hand Book. Boca Raton: CRC Press, 2001. 1-33.
  • 6Mahler R. Statistical Multisource Multitarget Information Fusion. Norwood: Artech House, 2007.
  • 7Mahler R. Multi-target Bayes filtering via first-order multitarget moments. IEEE Transactions on Aerospace and Electronic Systems, 2003, 39(4): 1152-1178.
  • 8Vo B N, Singh S, Doucet A. Sequential Monte Carlo methods for multi-target filtering with random finite sets. IEEE Transactions on Aerospace and Electronic Systems, 2005, 41(4): 1224-1245.
  • 9Vo B N, Ma W K. The Gaussian mixture probability hypothesis density filter. IEEE Transactions on Signal Processing, 2006, 54(11): 4091-4104.
  • 10Bar-Shalom Y. Tracking and Data Association. San Diego: Academic Press, 1988.

共引文献78

同被引文献97

  • 1谢恺,韩裕生,薛模根,周一宇,安玮.天基红外低轨星座的传感器管理方法[J].宇航学报,2007,28(5):1331-1336. 被引量:11
  • 2张涛,安玮,周一宇,李骏.基于推力加速度模板的主动段弹道跟踪方法[J].宇航学报,2006,27(3):385-389. 被引量:18
  • 3袁俊.弹道导弹预警系统及其发展趋势[J].国防科技,2007,28(3):33-36. 被引量:3
  • 4赵峰.弹道导弹防御跟踪制导雷达探测技术研究[D].长沙:国防科学技术大学,2007.
  • 5Aziz A M. A new nearest-neighbor association approach based on fuzzy clustering [ J ]. Aerospace Science and Technology, 2013, 26(2) :87 -97.
  • 6Svensson L, Svensson D, Guerriero M, et al. Set JPDA filter for muhitarget tracking [ J ]. IEEE Transactions on Signal Processing,2011,59(10) :4677 -4691.
  • 7Aziz A M, Tummala M, Cristi R. Fuzzy logic data correlation approach in multisensory-multitarget tracking systems [ J]. Signal Processing, 1999,76 (5) : 195 - 209.
  • 8Sathyan T, Sinha A, Kiruharajan T, et al. MDA-based data association with prior track information for passive multitarget tracking[ J ]. IEEE Transactions on Aerospace and Electrionic Systems, 2011,47 ( 1 ) :539 - 556.
  • 9Sathyan T, Chin T J, Arulampalam S, et al. A multiple hypothesis tracker for multitarget tracking with multiple simultaneous measurements[ J ]. IEEE Journal of Selected Topics in Signal Processing ,2013,7 ( 3 ) :448 - 460.
  • 10Le Q, Lance M K. Probability hypothesis density-based multitarget tracking for proximity sensor networks [ J ]. IEEE Transactions on Aerospace and Electrionic Systems, 2013,49 (3) :1476 - 1496.

引证文献7

二级引证文献37

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部