A GM-PHD filter for new appearing targets tracking

Hongjian Zhang, Jin Wang, B. Ye, Yuewu Zhang
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引用次数: 8

Abstract

Simulations reveal that the usual implementations of the Gaussian Mixture PHD filter can detect new targets only if its target-birth model is based on a priori knowledge of where new targets might appear. Otherwise, it cannot detect new targets (unless they happen to be near existing tracks) since it prunes Gaussian components that are not associated with existing tracks. In this paper, this problem is remedied by reserving at least one Gaussian component corresponding to each measurement in the revised Gaussian components pruning approach. Simulations involving four targets show that the proposed approach successfully deals with newly appearing targets.
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GM-PHD滤波器用于新出现的目标跟踪
仿真表明,高斯混合PHD滤波器的通常实现只有在其目标生成模型基于新目标可能出现的先验知识的情况下才能检测到新目标。否则,它无法检测到新目标(除非它们恰好在现有轨道附近),因为它会修剪与现有轨道不相关的高斯分量。在修正的高斯分量剪枝方法中,通过保留每个测量值对应的至少一个高斯分量来解决这个问题。四个目标的仿真结果表明,该方法能够有效地处理新出现的目标。
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