高斯混合概率假设密度(GM-PHD)滤波的自适应目标出生强度

Yan Cang, Di Chen, Weijin Sun
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引用次数: 2

摘要

在高斯混合概率假设密度(GM-PHD)滤波器的标准公式中,将新生的目标强度函数视为已知的先验概率。这一假设限制了其在实践中的应用。在标准GMPHD的基础上,提出了一种改进的方法,通过引入逻辑来区分两种类型的目标,称为UGM-PHD滤波器。在预测步骤中,如果逻辑值等于1,则根据每次扫描时接收到的测量值创建新目标。而在另一种情况下,将两类目标对应的强度函数加在一起进行联合预测,与传统GMPHD中对持续性目标的预测步骤相同。然后在更新步骤中,只关注持久目标的更新强度函数,因为新目标的更新权重不会超过输出阈值。这样可以自适应地获得目标生育强度。通过与传统GM-PHD方法的比较,仿真结果表明,改进后的方法提高了新目标的搜索能力和目标数量的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive target birth intensity for Gaussian Mixture Probability Hypothesis Density (GM-PHD) filter
In standard formulation of Gaussian Mixture Probability Hypothesis Density (GM-PHD) filter, the newborn target intensity function is regarded as a known prior probability. This assumption limited the application in practice. An improved method is proposed based on the standard GMPHD by introducing logicals to differentiate two types of targets, called UGM-PHD filter. In the prediction step, if the logicals is equal to one, newborn targets are created from the received measurements at each scan. While in another situation, the intensity function corresponding to the both types of targets are added together and predicted jointly as same as the prediction step of persistent targets in the traditional GMPHD. Then in the update step, only the updated intensity function of persistent targets is concerned, since the updated weight of new targets will not exceed the output threshold. In this way, the target birth intensity can be obtained adaptively. By comparing the improved method with the traditional GM-PHD method, the simulation results show that the former improves the ability of searching newborn targets and the estimation accuracy of the number of targets.
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