首页> 外文会议>International Conference on Information Fusion >A Method for Resolving the Merit Function Expansion of Dynamic Programming TBD
【24h】

A Method for Resolving the Merit Function Expansion of Dynamic Programming TBD

机译:解决动态规划TBD优值函数扩展的一种方法

获取原文

摘要

Existing dynamic programming based track-before-detect (DP-TBD) strategies suffer from merit function expansion phenomenon (MFEP), which aggravated the burden of designing the detection threshold. The traditional constant false alarm rate (CFAR) detection is ineffective because the noise energy can not be exactly estimated from the area of merit function expansion. the threshold setting of existing DP-TBD strategies usually resort to the traditional Monte-Carlo counting, the extreme-value theory or its generalized version. For the nonhomogeneous clutter background and the fluctuating target, all of these constant threshold setting strategies inevitably exist the target losing or higher false alarm rate. In addition, for the multi-target scenes, in order to avoid solving high-dimensional optimization problems, existing the most effective DP-TBD methods all use the additional heuristic procedures to extract target trajectories one-by-one from the merit function expansion area by assuming target tracks are always independent. To overcome the aforementioned challenges, a novel one-step greedy optimization TBD algorithm (OSP-TBD) is proposed in this paper. By constraining the physically admissible trajectories, such that the different targets do not occupy the same resolution cell during the same stage and the trajectory with higher merit function (MF) is estimated ahead of others, OSP-TBD can eliminate the MFEP intrinsically and traditional CFAR procedure can be used to detect target adaptively. Besides, the proposed OSP-TBD algorithm can be used to process multi-target situation directly and declare all of the target trajectories corresponding to the states whose MF at the final frame exceed the given detection threshold without any additional heuristic procedure. Numerical simulations are used to assess the performance of the proposed strategies.
机译:现有的基于动态编程的先检测后跟踪(DP-TBD)策略遭受优值函数扩展现象(MFEP),这加重了设计检测阈值的负担。传统的恒定误报率(CFAR)检测无效,因为无法从优值函数扩展的区域准确估计噪声能量。现有DP-TBD策略的阈值设置通常采用传统的蒙特卡洛计数,极值理论或其广义形式。对于不均匀的杂波背景和波动的目标,所有这些恒定阈值设置策略都不可避免地存在目标丢失或误报率较高的情况。另外,对于多目标场景,为了避免解决高维优化问题,现有最有效的DP-TBD方法都使用附加的启发式程序从优值函数扩展区域中一对一地提取目标轨迹。通过假设目标轨道始终是独立的。为了克服上述挑战,本文提出了一种新颖的单步贪婪优化TBD算法(OSP-TBD)。通过限制物理上允许的轨迹,以使不同的目标在同一阶段不会占据相同的分辨率单元,并且具有较高优值函数(MF)的轨迹比其他轨迹先估计,OSP-TBD可以固有地消除MFEP和传统的CFAR程序可用于自适应地检测目标。此外,提出的OSP-TBD算法可直接用于处理多目标情况,并声明与最终帧MF超过给定检测阈值的状态相对应的所有目标轨迹,而无需任何其他启发式过程。数值模拟用于评估所提出策略的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号