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A low-complexity interacting multiple model filter for maneuvering target tracking

机译:用于操纵目标跟踪的多模型滤波器的低复杂性

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摘要

In this work, we address the target tracking problem for a coordinate-decoupled Markovian jump-mean-acceleration based maneuvering mobility model. A novel low-complexity alternative to the conventional interacting multiple model (IMM) filter is proposed for this class of mobility models. The proposed tracking algorithm utilizes a bank of interacting filters where the interactions are limited to the mixing of the mean estimates, and it exploits a fixed off-line computed Kalman gain matrix for the entire filter bank. Consequently, the proposed filter does not require matrix inversions during on-line operation which significantly reduces its complexity. Simulation results show that the performance of the low-complexity proposed scheme remains comparable to that of the traditional (highly-complex) IMM filter. Furthermore, we derive analytical expressions that iteratively evaluate the transient and steady-state performance of the proposed scheme, and establish the conditions that ensure the stability of the proposed filter. The analytical findings are in close accordance with the simulated results.
机译:在这项工作中,我们解决了基于坐标解耦的马车跳跃平均加速度的目标跟踪问题。为这类移动模型提出了传统交互多模型(IMM)滤波器的新型低复杂性替代。所提出的跟踪算法利用一组交互滤波器,其中交互仅限于平均估计的混合,并且它利用整个滤波器组的固定的离线计算卡尔曼增益矩阵。因此,所提出的滤波器在在线操作期间不需要矩阵逆转,这显着降低了其复杂性。仿真结果表明,低复杂性提出方案的性能仍然与传统(高度复杂)IMM滤清器的性能相当。此外,我们推导出分析表达式,可迭代地评估所提出的方案的瞬态和稳态性能,并建立确保所提出的过滤器稳定性的条件。分析结果与模拟结果密切相关。

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