首页> 外文会议>Conference on Signal Processing, Sensor Fusion, and Target Recognition XIII; 20040413-20040415; Orlando,FL; US >A Particle Filter Algorithm for the Multi-Target Probability Hypothesis Density
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A Particle Filter Algorithm for the Multi-Target Probability Hypothesis Density

机译:多目标概率假设密度的粒子滤波算法

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This algorithm provides a method for non-linear multiple target tracking that does not require association of targets. This is done by recursive Bayesian estimation of the density corresponding to the expected number of targets in each measurable set-the Probability Hypothesis Density (PHD). Efficient Monte Carlo estimation is achieved by giving this density the role of the single target state probability density in the conventional particle filter. The problem setup for our algorithm includes (1) a bounded region of interest containing a changing number of targets, (2) independent observations each accompanied by estimates of false alarm probability and the probability that the observation represents something new, (3) an estimate of the Poisson rate at which targets leave the region of interest. The prototype application of this filter is to aid in short range acoustic contact detection and alertment for submarine systems. The filter uses as input passive acoustic detections from a fully automated process, which generates a large numbers of valid and false detections. The filter does not require specific target classification. Although the mathematical theory of Probability Hypothesis Density estimation has been developed in the context of modern Random Set Theory, our development relies on elementary methods instead. The principal tools are conditioning on the expected number of targets and identification of the PHD with the density for the proposition that at least one target is present.
机译:该算法提供了一种不需要目标关联的非线性多目标跟踪方法。这是通过对每个可测量集合中的预期目标数量(概率假设密度(PHD))进行密度的递归贝叶斯估计来完成的。有效的蒙特卡洛估计是通过在常规粒子滤波器中将此密度赋予单个目标状态概率密度的作用来实现的。我们算法的问题设置包括(1)包含不断变化的目标数量的有界关注区域;(2)独立的观察值,每个观察值均附有虚警概率的估计以及观察值代表新事物的概率;(3)估计值目标离开感兴趣区域的泊松速率的该滤波器的原型应用是用于辅助水下系统的短距离声接触检测和警报。该过滤器将来自全自动过程的无源声学检测用作输入,这会生成大量有效和错误的检测。过滤器不需要特定的目标分类。尽管概率假说密度估计的数学理论是在现代随机集理论的背景下发展起来的,但我们的发展却依赖于基本方法。主要工具是根据预期的目标数量以及以至少存在一个目标的命题密度来确定PHD。

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