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Radar Tracking of a Move-Stop-Move Maneuvering Target in Clutter

机译:在杂波中移动停止移动操纵目标的雷达跟踪

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In this paper we compare three different sequential estimation algorithms for tracking a single move-stop-move radar target in clutter. We consider optimal and suboptimal Bayesian estimation algorithms, with a special focus on particle filters (PF). The target is modeled using Markov Chains switching theory. Target maneuvers are defined by four different motion models: a stopped target model, a constant velocity model, an acceleration and a deceleration model. We analyze a realistic car traffic scenario by splitting the problem into two study cases. In the first case measurements are expressed in Cartesian coordinates, while in the second we address the problem of nonlinearity in the measurement model. Both cases are characterized by the presence of additive Gaussian noise and by a detection probability less than unity. In addition we are also interested in false measurements originated by high level clutter. The aim of this paper is to compare the so called IMM-PDA-ABF (interacting multiple model, probabilistic data association, auxiliary bootstrap filter) to the well-established Kalman-based PDAF (probabilistic data association filter) and IMM-PDAF (interacting multiple model, probabilistic data association filter) tracking algorithms. Parametric and non-parametric sequential estimation procedures are also taken into account. Advantages and disadvantages of the proposed algorithms are illustrated and discussed through computer simulations.
机译:在本文中,我们比较了三种不同的顺序估计算法,用于跟踪杂波中的单个移动停止移动雷达目标。我们考虑最佳和次优贝叶斯估计算法,特别关注粒子过滤器(PF)。目标采用马尔可夫链条切换理论进行建模。目标机动由四种不同的运动模型定义:停止的目标模型,恒定速度模型,加速度和减速模型。我们通过将问题分成两种研究案例来分析现实的汽车交通方案。在第一种情况下,测量以笛卡尔坐标表示,而在第二个中,我们解决了测量模型中的非线性问题的问题。两种情况的特征在于存在加性高斯噪声,并通过比单核的检测概率为特征。此外,我们也对起源于高级杂乱的错误测量感兴趣。本文的目的是将所谓的IMM-PDA-ABF(将多种模型,概率数据关联,辅助引导滤波器)进行比较到建立的基于Kalman的PDAF(概率数据关联滤波器)和IMM-PDAF(交互多模型,概率数据关联滤波器)跟踪算法。也考虑了参数和非参数顺序估计程序。通过计算机模拟说明和讨论了所提出的算法的优点和缺点。

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