Outlier-Robust Schmidt-Kalman Filter Using Variational Inference

Yi Liu, Xi Li, Yanbo Xue, S. Weddell, Le Yang, L. Mihaylova
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Abstract

The Schmidt-Kalman filter (SKF) achieves filtering consistency in the presence of biases in system dynamic and measurement models through accounting for their impacts when updating the state estimate and covariance. However, the performance of the SKF may break down when the measurements are subject to non-Gaussian and heavy-tail noise. To address this, we impose the Wishart prior distribution on the precision matrix of measurement noise, such that the measurement likelihood now has heavier tails than the Gaussian distribution to deal with the potential occurrence of outliers. Variational inference is invoked to establish analytically tractable methods for computing the posterior of the system state, system biases, and the measurement noise precision matrix. The principle of the SKF considers the effect of system biases but does not actively estimate them when two variants of outlier-robust SKFs are incorporated. We evaluate their performance in terms of estimation accuracy and filtering consistency using simulations and real-world data. Promising results are obtained.
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基于变分推理的离群鲁棒施密特-卡尔曼滤波
Schmidt-Kalman滤波器(SKF)通过在更新状态估计和协方差时考虑系统动态和测量模型中存在偏差的影响,实现了在存在偏差情况下的滤波一致性。然而,当测量受到非高斯和重尾噪声的影响时,SKF的性能可能会崩溃。为了解决这个问题,我们在测量噪声的精度矩阵上施加了Wishart先验分布,使得测量似然现在具有比高斯分布更重的尾部,以处理异常值的潜在发生。变分推理是用来建立分析易于处理的方法来计算系统状态、系统偏差和测量噪声精度矩阵的后验。SKF的原理考虑了系统偏差的影响,但当结合了两个异常鲁棒SKF的变体时,不会主动估计它们。我们使用模拟和真实世界的数据来评估它们在估计精度和过滤一致性方面的性能。取得了令人满意的结果。
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