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Estimation under unknown correlation: covariance intersection revisited

机译:未知相关性下的估计:重新探讨协方差交集

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Addresses the problem of obtaining a consistent estimate (or upper bound) of the covariance matrix when combining two quantities with unknown correlation. The combination is defined linearly with two gains. When the gains are chosen a priori, a family of consistent estimates is presented in the note. The member in this family having minimal trace is said to be "family-optimal." When the gains are to be optimized in order to achieve minimal trace of the family-optimal estimate of the covariance matrix, it is proved that the global optimal solution is actually given by the covariance intersection algorithm, which conducts the search only along a one-dimensional curve in the n-squared-dimensional space of combination gains.
机译:解决了将两个具有未知相关性的量组合在一起时获得协方差矩阵的一致估计(或上限)的问题。线性定义具有两个增益的组合。先验选择收益后,便会在注释中给出一系列一致的估计。该家族中痕量最少的成员被称为“家族最佳”。当要优化增益以最小化协方差矩阵的家庭最优估计的踪迹时,证明了协方差交点算法实际上给出了全局最优解,该算法仅沿一个方向进行搜索。组合增益的n平方空间中的三维曲线。

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