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Statistical Analysis of Kalman Filters by Conversion to Gauss-Helmert Models with Applications to Process Noise Estimation

机译:转换为高斯-赫尔默特模型的卡尔曼滤波器的统计分析及其在过程噪声估计中的应用

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This paper introduces a reformulation of the extended Kalman Filter using the Gauss-Helmert model for least squares estimation. By proving the equivalence of both estimators it is shown how the methods of statistical analysis in least squares estimation can be applied to the prediction and update process in Kalman Filtering. Especially the efficient computation of the reliability (or redundancy) matrix allows the implementation of self supervising systems. As an application an unparameterized method for estimating the variances of the filters process noise is presented.
机译:本文介绍了使用Gauss-Helmert模型的最小二乘估计对扩展卡尔曼滤波器的重新表述。通过证明两个估计器的等价性,显示了最小二乘估计中的统计分析方法如何应用于卡尔曼滤波中的预测和更新过程。尤其是可靠性(或冗余)矩阵的有效计算允许实施自我监督系统。作为一种应用,提出了一种用于估计滤波器过程噪声方差的非参数化方法。

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