Track-to-Track fusion with cross-covariances from radar and IR/EO sensor

Kaipei Yang, Y. Bar-Shalom, P. Willett
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引用次数: 3

Abstract

The Track-to-track fusion (T2TF) problem for estimates from radar and infrared/electro-optical (IR/EO) sensor is studied in this work. For such a problem, the heterogeneous estimates from local trackers (LT) are in different state spaces with various dimensions and are related by a nonlinear relationship with no inverse transformation. For the homogeneous T2TF problem, where the common state model is shared by both LTs in the same state space, the cross-covariance between the local estimation errors, which has been known for some time, needs to be considered in the T2TF. However, such a cross-covariance for heterogeneous T2TF was not available in previous works. In the present work, the derivation of the cross-covariance for heterogeneous LTs of different dimension states is provided, yielding a recursion, by taking into account the relationship between the local state model process noises. A linear minimum mean square (LMMSE) estimator is used for the T2TF. With the cross-covariance involved, the fusion will generate the covariance of the fused estimation error which makes the system consistent as shown in the simulation through Monte-Carlo runs.
基于雷达和红外/光电传感器交叉协方差的航迹融合
研究了基于雷达和红外/光电(IR/EO)传感器估计的轨道到轨道融合(T2TF)问题。对于该问题,局部跟踪器(LT)的异构估计处于不同维数的不同状态空间中,并且是一种非线性关系,没有逆变换。对于齐次T2TF问题,两个ltt在同一状态空间中共享公共状态模型,需要在T2TF中考虑已经已知一段时间的局部估计误差之间的交叉协方差。然而,这种异质性T2TF的交叉协方差在以前的工作中是不可用的。在本工作中,通过考虑局部状态模型过程噪声之间的关系,提供了不同维状态的异构LTs的交叉协方差的推导,从而产生递归。对T2TF使用线性最小均方(LMMSE)估计器。在引入交叉协方差的情况下,融合会产生融合后估计误差的协方差,使系统保持一致,通过蒙特卡罗运行的仿真可以看出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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