使用smc强度过滤器跟踪维护

C. Degen, F. Govaers, W. Koch
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引用次数: 3

摘要

所谓的记忆缺失是概率假设密度(PHD)滤波器的一个固有挑战,它导致只有依赖于当前可用测量的目标才能在各自的迭代中被安全地报告。然而,目前还没有提出一种方法,使顺序蒙特卡罗(SMC)版本的强度滤波器(iFilter)能够管理测量失败。在本文中,我们在smc - filter中开发了一个程序和一个完整的实现方案来检测测量失败并生成所谓的伪测量,用于估计属于缺失测量的目标状态。为了评估所开发的方法在精度方面进行了数值研究,使用线性多目标场景的模拟。
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Track maintenance using the SMC-intensity filter
The so-called lack of memory is an inherent challenge of the probability hypothesis density (PHD) filter and leads to the fact that only targets which rely on a currently available measurement can securely be reported as present in the respective iteration. Yet there is no method presented that enables the sequential Monte Carlo (SMC) version of the intensity filter (iFilter) to manage failure of measurements. In this paper we develop a procedure and a complete implementation scheme within the SMC-iFilter to detect failure of measurements and to generate so-called pseudo measurements, which are used to estimate the state of targets, belonging to missing measurements. To assess the developed method with respect to accuracy a numerical study is carried out, using a simulation of a linear multi-object scenario.
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Simultaneous localization and mapping for non-parametric potential field environments Multisensor traffic mapping filters Track maintenance using the SMC-intensity filter Creating a likelihood vector for ground moving targets in the exo-clutter region of airborne radar signals A particle filter for target arrival detection and tracking in Track-Before-Detect
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