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Bias fusion estimation for multi-target tracking systems with multiple asynchronous sensors

机译:具有多个异步传感器的多目标跟踪系统的偏差融合估计

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摘要

In this paper, a two-layer fusion structure is adopted to estimate the time-varying sensor bias for multi-target tracking systems with multiple asynchronous sensors. We consider the general cases, where the number of sensors is arbitrary as well as their sampling rates and initial sampling instants. First, for each target, a pseudo-measurement of sensor biases is generated by fusing all measurements of this target. In order to make the pseudo-measurement decoupled from the target state, the fusion coefficient matrix is determined to be a basis for the left null space of an augmented observation matrix. Then, without ignoring the correlations between the involved noises, a bias estimation algorithm is proposed optimally based on Kalman filter by further fusing all pseudo-measurements. The global bias estimate is proved to be unrelated to the choice of the basis for the above mentioned left-null space. Moreover, a recursive form of the proposed algorithm is provided to reduce the computational complexity. Finally, the feasibility and effectiveness of the proposed fusion estimation algorithm are illustrated by a numerical simulation.
机译:本文采用两层融合结构来估计具有多个异步传感器的多目标跟踪系统的时变传感器偏差。我们考虑一般情况,其中传感器的数量是任意的,以及它们的采样率和初始采样瞬间。首先,对于每个目标,通过融合该目标的所有测量值来生成传感器偏差的伪测量。为了使伪测量与目标状态解耦,融合系数矩阵被确定为增强观测矩阵的左空空间的基础。然后,在不忽略所涉及的噪声之间的相关性的情况下,通过进一步融合所有伪测量,提出了一种基于卡尔曼滤波器的偏置估计算法。事实证明,全局偏差估计与上述左零空间的基础的选择无关。此外,提供了所提出算法的递归形式以减少计算复杂度。最后,通过数值仿真说明了该融合估计算法的可行性和有效性。

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