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Rao-Blackwellised Point-Mass Smoothers for a Class of Conditionally Linear Dynamic Models

机译:Rao-Blackwellised Point-Mass SmooThers为一类有条件线性的动态模型

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The paper deals with the state estimation of nonlinear stochastic dynamic systems. The stress is laid on the numerical solution to the Bayes' rule considering a class of conditionally linear Gaussian models typically appearing in navigation. In particular, three novel Rao-Blackwellised smoothers are proposed, where the nonlinear part of the model is solved by a computationally expensive point-mass smoother, whereas the conditionally linear part is solved by a set of linear smoothers. The proposed smoothers offer a tradeoff between the computational complexity and smoothing performance. The properties of the smoothers are theoretically analysed and discussed.
机译:本文涉及非线性随机动态系统的状态估计。考虑到一类有条件地线性高斯模型通常出现在导航中的一类条件线性高斯模型,应力铺设了对贝叶斯规则的数值解决方案。特别地,提出了三种新的Rao-Blackwellised SmoOthers,其中模型的非线性部分通过计算昂贵的点质量光滑来解决,而条件线性部分由一组线性的滑泡体求解。拟议的smoothers提供计算复杂性和平滑性能之间的权衡。理论上和讨论了Smoothers的性质。

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