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首页> 外文期刊>International Journal of Control, Automation, and Systems >Out-of-Sequence-Measurement Processing for Probabilistic Multiple Hypothesis Tracker with Measurement Reordering
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Out-of-Sequence-Measurement Processing for Probabilistic Multiple Hypothesis Tracker with Measurement Reordering

机译:带有测量重新排序的概率多重假设跟踪器的失序测量处理

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摘要

In a multi-sensor central level tracking system, owing to random delay in transmission and varying preprocessing time for different sensor platforms, an earlier measurement from the same target can arrive at the fusion center after a later one. Practical data fusion schemes are challenged by the inevitable appearance of measurements that are out of sequence, called, "out-of-sequence measurements" (OOSMs). The question is how to incorporate these OOSMs in a track that has already been updated with a later observation in order to enhance the performance of the tracking system. Several approaches for a sequential algorithm to find a solution for the OOSM problem have been discussed in previous papers. An approach to address the OOSM problem in the probabilistic multi-hypothesis tracker (PMHT), being a batch algorithm, was proposed in previous paper. However, the situation of this approach was not an OOSM case but, rather, an out of sequence scan (OOSS) where a batch of data was lost and then only one scan of measurements from the lost batch arrived with the present batch. In this paper, we propose an approach that has a measurement reordering step to address the OOSM problem in the PMHT within the framework of the OOSM case and report on the performance with the simulation results. The simulation results indicate that the proposed approach may be a suitable solution for the OOSM problem in PMHT under the proper conditions of length of batch, amount of lag, density of clutter, and probability of detection for the target.
机译:在多传感器中央水平跟踪系统中,由于传输中的随机延迟和不同传感器平台的预处理时间的变化,来自同一目标的较早测量结果可能在较晚的目标之后到达融合中心。实际的数据融合方案受到不可避免出现的乱序测量(称为“乱序测量”(OOSM))的挑战。问题是如何将这些OOSM合并到已通过后续观察更新的轨道中,以增强跟踪系统的性能。在先前的论文中已经讨论了几种用于寻找OOSM问题的解决方案的顺序算法。在先前的论文中,提出了一种解决概率多假设跟踪器(PMHT)中的OOSM问题的方法,即批处理算法。但是,这种方法的情况不是OOSM情况,而是乱序扫描(OOSS),其中丢失了一批数据,然后只有一次扫描丢失的批次的测量值与当前批次一起到达。在本文中,我们提出了一种具有测量重新排序步骤的方法,以在OOSM案例框架内解决PMHT中的OOSM问题,并通过仿真结果报告性能。仿真结果表明,在适当的批处理长度,滞后量,杂波密度和目标检测概率的适当条件下,该方法可能是PMHT中OOSM问题的合适解决方案。

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