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Inverse Covariance Intersection Fusion of Multiple Estimates

机译:协方差逆交估计的融合

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Linear fusion of estimates is a basic tool for combining probabilistic data. If the correlation of estimation errors is unknown, the fusion performance is evaluated with respect to the worst case. Inverse Covariance Intersection fusion is a rule for combining two estimates with partially known crosscorrelation matrix. This paper generalises the rule to fusing multiple estimates. First, the generalised assumption and the essential theory are presented. A suboptimal solution with a simple parametrisation is derived next and it is shown to be better than the solution for unknown correlation. Finally, a recursive fusion of multiple estimates is designed.
机译:估计值的线性融合是组合概率数据的基本工具。如果估计误差的相关性未知,则针对最坏情况评估融合性能。协方差交集逆融合是将两个估计与部分已知互相关矩阵相结合的规则。本文将规则概括为融合多个估计。首先,提出了广义假设和基本理论。接下来推导具有简单参数化的次优解决方案,结果表明它比未知相关性的解决方案要好。最后,设计了多个估计的递归融合。

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