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

机译:与雷达和IR / EO传感器的交叉协方格的跟踪融合

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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.
机译:在这项工作中研究了雷达和红外/电光(IR / EO / EO)传感器的估计的轨道对轨道融合(T2TF)问题。对于这样的问题,来自局部跟踪器(LT)的异构估计在具有各种尺寸的不同状态空间中,并且通过与无逆变换的非线性关系相关。对于均匀的T2TF问题,其中通过在相同状态空间中的两个LT共享公共状态模型,在T2TF中需要考虑局部估计误差之间已知的局部估计误差之间的交叉协方差。然而,在以前的作品中不可用这种用于异质T2TF的这种交叉协方差。在本作工作中,提供了不同尺寸状态的异构LTS的交叉协方差的推导,通过考虑到局部状态模型处理噪声之间的关系来产生递归。线性最小均方(LMMSE)估计器用于T2TF。随着涉及的跨协方差,融合将产生融合估计误差的协方差,这使得系统一致如通过Monte-Carlo运行所示。

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