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Iterated statistical linear regression for Bayesian updates

机译:贝叶斯更新的迭代统计线性回归

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This paper deals with Gaussian approximations to the posterior probability density function (PDF) in Bayesian nonlinear filtering. In this setting, using sigma-point based approximations to the Kalman filter (KF) recursion is a prominent approach. In the update step, the sigma-point KF approximations are equivalent to performing the statistical linear regression (SLR) of the (nonlinear) measurement function with respect to the prior PDF. In this paper, we indicate that the SLR of the measurement function with respect to the posterior is expected to provide better results than the SLR with respect to the prior. The resulting filter is referred to as the posterior linearisation filter (PLF). In practice, the exact PLF update is intractable but can be efficiently approximated by carrying out iterated SLRs based on sigma-point approximations. On the whole, the resulting filter, the iterated PLF (IPLF), is expected to outperform all sigma-point KF approximations as demonstrated by numerical simulations.
机译:本文讨论了贝叶斯非线性滤波中后验概率密度函数(PDF)的高斯近似。在这种情况下,对卡尔曼滤波器(KF)递归使用基于sigma-point的近似值是一种突出的方法。在更新步骤中,sigma-point KF近似值等效于对先前的PDF执行(非线性)测量函数的统计线性回归(SLR)。在本文中,我们表明,相对于后验,测量函数的SLR预期会提供比后验的SLR更好的结果。所得的过滤器称为后线性化过滤器(PLF)。在实践中,确切的PLF更新是很难处理的,但是可以通过执行基于sigma-point近似的迭代SLR来有效地近似。总体而言,如数值模拟所示,预期的滤波器即迭代PLF(IPLF)的性能将优于所有sigma-point KF近似值。

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