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Adaptive M-Estimation for Robust Cubature Kalman Filtering

机译:鲁棒的卡尔曼滤波的自适应M估计

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As a l1/l2 norms-based estimation method, Huber's M- estimation has provided an efficient method to deal with measurement outliers for robust filtering, which has been applied to the cubature Kalman filter (CKF), namely Huber's M-estimation based robust CKF (HCKF) and its square-root version (HSCKF). To further handle abnormal measurement noise, an adaptive method is proposed in this paper to adjust the measurement noise covariance used in the Huber's M-estimation approach based on the difference between actual and theoretical innovation covariance, leading to adaptive HCKF (AHCKF) and adaptive HSCKF (AHCKF). Simulation results on a typical target tracking model have demonstrated their advantages over existing approaches in terms of estimate accuracy, outlier-robustness and reliability.
机译:作为基于l1 / l2范数的估计方法,Huber的M估计提供了一种有效的方法来处理测量值异常,以进行鲁棒滤波,该方法已应用于库尔曼卡尔曼滤波器(CKF),即基于Huber的M估计的鲁棒CKF。 (HCKF)及其平方根版本(HSCKF)。为了进一步处理异常测量噪声,本文提出了一种自适应方法,根据实际和理论创新协方差之间的差异来调整Huber M估计方法中使用的测量噪声协方差,从而导致自适应HCKF(AHCKF)和自适应HSCKF (AHCKF)。在典型的目标跟踪模型上的仿真结果证明了它们在估计精度,离群值鲁棒性和可靠性方面优于现有方法。

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