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M-Estimation-Based Robust Kalman Filter Algorithm for Three-Dimensional AoA Target Tracking

机译:基于M估计的鲁棒卡尔曼滤波算法用于三维AoA目标跟踪

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An attractive issue in numerous applications is to track targets in three-dimensional (3-D) space with angle of arrival (AoA) measurements through nonlinear filters. The tracking performance degradation caused by outlier prompts a variety of robust filters. In this paper, an M-estimation-based robust bias compensation Kalman filter algorithm (MR-BCKF) is proposed. This algorithm recasts the AoA measurement equation to a linear form by pseudo-linearization, and then incorporates the M-estimation criterion into pseudo linear Kalman filter to enhance robustness, followed by the bias compensation to improve tracking accuracy. An improved three-segment weight function based on Mahalanobis distance is established to handle outliers for each element, which does not require the noise characteristics. Simulation demonstrates that MR-BCKF has enhanced robustness against outliers at different levels and achieves more accurate tracking compared with other robust filters.
机译:在众多应用中,一个有吸引力的问题是通过非线性滤波器通过到达角(AoA)测量来跟踪三维(3-D)空间中的目标。由异常值引起的跟踪性能下降会提示各种健壮的过滤器。本文提出了一种基于M估计的鲁棒偏置补偿卡尔曼滤波算法(MR-BCKF)。该算法通过伪线性化将AoA测量方程式重铸为线性形式,然后将M估计标准合并到伪线性卡尔曼滤波器中以增强鲁棒性,然后进行偏置补偿以提高跟踪精度。建立了基于马氏距离的改进的三段权重函数,以处理每个元素的离群值,这不需要噪声特征。仿真表明,与其他鲁棒滤波器相比,MR-BCKF具有更高的鲁棒性,可以抵抗不同级别的离群值。

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