Li Miao, Li Jun, Zhou Yiyu
College of Electronic Science and Engineering, National University of Defense Technology, Changsha 410073, Hunan, P.R. China.
Sensors (Basel). 2015 Dec 8;15(12):30839-55. doi: 10.3390/s151229829.
The problem of jointly detecting and tracking multiple targets from the raw observations of an infrared focal plane array is a challenging task, especially for the case with uncertain target dynamics. In this paper a multi-model labeled multi-Bernoulli (MM-LMB) track-before-detect method is proposed within the labeled random finite sets (RFS) framework. The proposed track-before-detect method consists of two parts-MM-LMB filter and MM-LMB smoother. For the MM-LMB filter, original LMB filter is applied to track-before-detect based on target and measurement models, and is integrated with the interacting multiple models (IMM) approach to accommodate the uncertainty of target dynamics. For the MM-LMB smoother, taking advantage of the track labels and posterior model transition probability, the single-model single-target smoother is extended to a multi-model multi-target smoother. A Sequential Monte Carlo approach is also presented to implement the proposed method. Simulation results show the proposed method can effectively achieve tracking continuity for multiple maneuvering targets. In addition, compared with the forward filtering alone, our method is more robust due to its combination of forward filtering and backward smoothing.
从红外焦平面阵列的原始观测中联合检测和跟踪多个目标的问题是一项具有挑战性的任务,特别是对于目标动态不确定的情况。本文在标记随机有限集(RFS)框架内提出了一种多模型标记多伯努利(MM-LMB)先检测后跟踪方法。所提出的先检测后跟踪方法由两部分组成——MM-LMB滤波器和MM-LMB平滑器。对于MM-LMB滤波器,基于目标和测量模型将原始LMB滤波器应用于先检测后跟踪,并与交互多模型(IMM)方法相结合以适应目标动态的不确定性。对于MM-LMB平滑器,利用轨迹标签和后验模型转移概率,将单模型单目标平滑器扩展为多模型多目标平滑器。还提出了一种序贯蒙特卡罗方法来实现所提出的方法。仿真结果表明,所提出的方法能够有效地实现对多个机动目标的跟踪连续性。此外,与单独的前向滤波相比,我们的方法由于结合了前向滤波和后向平滑而更加稳健。