基于变点检测的目标轨迹初始化算法

V. Spivak, A. Tartakovsky
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引用次数: 1

摘要

在许多物体轨迹初始化的问题中,可以使用变化点检测算法。在过去,当计算复杂性是一个问题时,$K$ / $N$算法由于计算简单而受到欢迎。在计算技术突飞猛进的今天,寻找更高效的检测和航迹起始算法已成为迫切需要解决的问题。基于序列变化检测技术,可以建立一种更有效的航迹起始算法。在本文中,我们考虑有限移动平均算法。我们比较了$K$ / $N$算法和有限移动平均算法的性能。最优性准则是在给定的虚警风险下,以局部虚警概率度量在一定时间间隔内正确检测的概率最大化。在性能方面,我们得到了理论估计和蒙特卡罗(MC)模拟估计。结果表明,有限移动平均算法明显优于$K$ / $N$算法。
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Efficient Algorithm for Initialization of Object Tracks Based on Changepoint Detection Method
In many problems of the initialization of objects' tracks, changepoint detection algorithms can be used. In the past when computational complexity was an issue, the $K$ / $N$ algorithm gained its popularity due to computational simplicity. Nowadays with the tremendous progress in computing technology, the problem of finding more efficient detection and track initiation algorithms is urgent. A substantially more efficient track initiation algorithm can be built based on the sequential change detection technique. In this paper, we consider the Finite Moving Average algorithm. We compare the performance of the $K$ / $N$ algorithm and the Finite Moving Average algorithm. The optimality criterion is to maximize the probability of correct detection in a certain time interval under the given false alarm risk measured as the local probability of a false alarm. For performance, we obtain a theoretical estimate and an estimate by Monte Carlo (MC) simulations. The results show that the Finite Moving Average algorithm performs significantly better than the $K$ / $N$ procedure.
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