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A Joint Multitarget Estimator for the Joint Target Detection and Tracking Filter

机译:用于联合目标检测和跟踪滤波器的联合多目标估计器

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摘要

This paper proposes a joint multitarget (JoM) estimator for the joint target detection and tracking (JoTT) filter. An efficient choice to the unknown JoM estimation constant (i.e., hypervolume around target state estimate) is proposed as a Pareto-optimal solution to a multi-objective nonlinear convex optimization problem. The multi-objective function is formulated as two convex objective functions in conflict. The first objective function is the information theoretic part of the problem and aims for entropy maximization, while the second one arises from the constraint in the definition of the JoM estimator and aims to improve the accuracy of the JoM estimates. The Pareto-optimal solution is obtained using the weighted sum method, where objective weights are determined as linear predictions from autoregressive models. In contrast to the marginal multitarget (MaM) estimator, the “target-present” decision from the JoM estimator depends on the spatial information as well as the cardinality information in the finite-set statistics (FISST) density. The simulation results demonstrate that the JoM estimator achieves better track management performance in terms of track confirmation latency and track maintenance than the MaM estimator for different values of detection probability. However, the proposed JoM estimator suffers from track termination latency more than the MaM estimator since the localization performance of the JoTT filter does deteriorate gradually after target termination.
机译:本文提出了一种联合多目标(JoM)估计器,用于联合目标检测和跟踪(JoTT)滤波器。提出了对未知JoM估计常数(即目标状态估计周围的超体积)的有效选择,作为多目标非线性凸优化问题的帕累托最优解。将多目标函数表述为冲突中的两个凸目标函数。第一个目标函数是问题的信息理论部分,旨在实现熵最大化,而第二个目标函数则来自JoM估计器定义的约束,旨在提高JoM估计的准确性。使用加权和方法获得帕累托最优解,其中将目标权重确定为来自自回归模型的线性预测。与边缘多目标(MaM)估计器相比,JoM估计器的“目标存在”决策取决于空间信息以及有限集统计(FISST)密度中的基数信息。仿真结果表明,对于不同的检测概率值,JoM估计器在轨道确认等待时间和轨道维护方面比MaM估计器具有更好的轨道管理性能。但是,由于JoTT滤波器的定位性能确实会在目标终止后逐渐变差,因此所提出的JoM估计器比MaM估计器遭受的跟踪终止延迟更多。

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