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Optimal multisensor data fusion for linear systems with missing measurements

机译:缺少测量线性系统的最佳多传感器数据融合

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Multisensor Data fusion has attracted a lot of research in recent years. It has been widely used in many applications especially military applications for target tracking and identification. In this paper, we will handle the multisensor data fusion problem for systems suffering from the possibility of missing measurements. We present the optimal recursive fusion filter for measurements obtained from two sensors subject to random intermittent measurements. The noise covariance in the observation process is allowed to be singular which requires the use of generalized inverse. Illustration example shows the effectiveness of the proposed filter in the measurements loss case compared to the available optimal linear fusion methods.
机译:多传感器数据融合近年来吸引了大量的研究。它已广泛用于许多应用中,特别是用于目标跟踪和识别的军事应用。在本文中,我们将处理患有缺失测量可能性的系统的多传感器数据融合问题。我们介绍了从两个传感器获得的测量值,该测量值受到随机间歇测量的两个传感器。观察过程中的噪声协方差被允许是奇异的,这需要使用广义逆。例证示例显示了与可用的最佳线性融合方法相比,在测量损耗外壳中所提出的滤波器的有效性。

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