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A Bayesian robust Kalman smoothing framework for state-space models with uncertain noise statistics

机译:贝叶斯强大的卡尔曼平滑框架,用于状态空间模型,具有不确定的噪声统计

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摘要

Abstract The classical Kalman smoother recursively estimates states over a finite time window using all observations in the window. In this paper, we assume that the parameters characterizing the second-order statistics of process and observation noise are unknown and propose an optimal Bayesian Kalman smoother (OBKS) to obtain smoothed estimates that are optimal relative to the posterior distribution of the unknown noise parameters. The method uses a Bayesian innovation process and a posterior-based Bayesian orthogonality principle. The optimal Bayesian Kalman smoother possesses the same forward-backward structure as that of the ordinary Kalman smoother with the ordinary noise statistics replaced by their effective counterparts. In the first step, the posterior effective noise statistics are computed. Then, using the obtained effective noise statistics, the optimal Bayesian Kalman filter is run in the forward direction over the window of observations. The Bayesian smoothed estimates are obtained in the backward step. We validate the performance of the proposed robust smoother in the target tracking and gene regulatory network inference problems.
机译:摘要古典卡尔曼更顺畅,使用窗口中的所有观测,递归地估计各个有限时间窗口。在本文中,我们假设表征过程和观察噪声的二阶统计的参数未知,并提出了最佳的贝叶斯卡尔曼更顺畅(OBK),以获得相对于未知噪声参数的后部分布的平滑估计。该方法采用贝叶斯创新进程和基于后后的贝叶斯正交原则。最佳的贝叶斯卡尔曼更顺畅,与普通的卡尔曼相同的前后结构,与他们有效的对应物所取代的普通噪声统计相同。在第一步中,计算后部有效噪声统计。然后,使用获得的有效噪声统计数据,最佳贝叶斯卡尔曼滤波器在观察窗口上以向前方向运行。贝叶斯平滑的估计是在落后步骤中获得的。我们验证了在目标跟踪和基因监管网络推理问题中提出的强大更顺畅的性能。

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