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首页> 外文期刊>IEICE Transactions on fundamentals of electronics, communications & computer sciences >Low-Complexity Fusion Estimation Algorithms for Multisensor Dynamic Systems
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Low-Complexity Fusion Estimation Algorithms for Multisensor Dynamic Systems

机译:多传感器动态系统的低复杂度融合估计算法

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摘要

This paper focuses on fusion estimation algorithms weighted by matrices and scalars, and relationship between them is considered. We present new algorithms that address the computation of matrix weights arising from multidimensional estimation problems. The first algorithm is based on the Cholesky factorization of a cross-covanance block-matrix. This algorithm is equivalent to the standard composite fusion estimation algorithm however it is low-complexity. The second fusion algorithm is based on an approximation scheme which uses special steady-state approximation for local cross-covariances. Such approximation is useful for computing matrix weights in real-time. Subsequent analysis of the proposed fusion algorithms is presented, in which examples demonstrate the low-computational complexity of the new fusion estimation algorithms.
机译:本文着重研究矩阵和标量加权的融合估计算法,并考虑它们之间的关系。我们提出了解决多维估计问题引起的矩阵权重计算的新算法。第一种算法基于交叉契据块矩阵的Cholesky分解。该算法与标准的复合融合估计算法等效,但是复杂度较低。第二种融合算法基于一种近似方案,该方案对局部互协方差使用特殊的稳态近似。这种近似对于实时计算矩阵权重很有用。随后提出了所提出的融合算法的分析,其中的示例说明了新融合估计算法的低计算复杂性。

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