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The Modified Probability Hypothesis Density Filter With Adaptive Birth Intensity Estimation for Multi-Target Tracking in Low Detection Probability

机译:用于低检测概率的多目标跟踪自适应出生强度估计的修改概率假设密度滤波器

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摘要

The existing Probability Hypothesis Density (PHD) filters with birth intensity estimation only operate on single or two consecutive scan data for multi-target tracking. However, for those targets with low detection probability, it is hard to achieve a satisfactory level of track initiation and maintenance. To overcome the weakness above, we propose a modified PHD filter with adaptive birth intensity estimation. The core of the proposed filter is to define two state sets as the formal set and the temporary set. In the framework of measurement driven estimation, we classify the measurements into three categories depending on whether it is in the neighborhood of the state in above two sets. And the birth states of the formal set and the temporary set are generated by the classified measurements respectively. In addition, if there is no matching measurement for the state in the formal set, duplicate the corresponding state as the birth state of the temporary set. For each state in temporary set, we introduce a forgetting factor and a dynamic detection probability in filter to cope with the rapid decrease of its intensity due to the absence of measurement. If its forgetting factor is over the dead threshold, the state will be deleted from the set. Based on the principles above, we derive the Gaussian-mixture (GM) implementation of the PHD filter proposed in this paper. Experiment results show that, in low detection probability scenario, the modified PHD filter outperforms other PHD filters with birth intensity estimation.
机译:具有出生强度估计的现有概率假设密度(PHD)滤波器仅在单个或两个连续扫描数据上运行,用于多目标跟踪。然而,对于具有低检测概率的目标,很难实现令人满意的轨道启动和维护。为了克服上述弱点,我们提出了一种改进的PHD滤波器,具有自适应出生强度估计。所提出的滤波器的核心是将两个状态集定义为正式集和临时集。在测量驱动估计的框架中,我们将测量分为三类,具体取决于它是否在上述状态的邻居附近。和正式集和临时集的出生状态分别由分类测量产生。另外,如果正式集中的状态没有匹配测量,则将相应状态复制为临时集的出生状态。对于临时集中的每个状态,我们在过滤器中引入了遗忘因子和动态检测概率,以应对由于没有测量而迅速降低其强度。如果它的遗忘因子超过死阈值,则将从集合中删除该状态。基于上述原理,我们推导出本文提出的高斯混合物(GM)实施。实验结果表明,在低检测概率场景中,修改的PHD滤波器优于具有出生强度估计的其他PHD滤波器。

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