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Recursive fixed-point smoothing algorithm from covariances based on uncertain observations with correlation in the uncertainty

机译:基于不确定性与相关性的不确定性的协方差递归定点平滑算法

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This paper considers the least-squares linear estimation problem of a discrete-time signal from noisy observations in which the signal can be randomly missing. The uncertainty about the signal being present or missing at the observations is characterized by a set of Bernoulli variables which are correlated when the difference between times is equal to a certain value m. The marginal distribution of each one of these variables, specified by the probability that the signal exists at each observation, as well as their correlation function, are known. A linear recursive filtering and fixed-point smoothing algorithm is obtained using an innovation approach without requiring the state-space model generating the signal, but just the covariance functions of the processes involved in the observation equation. (C) 2008 Elsevier Inc. All rights reserved.
机译:本文从嘈杂的观测中考虑了离散时间信号的最小二乘线性估计问题,其中信号可能会随机丢失。观测中存在或缺失信号的不确定性的特征在于一组伯努利变量,当时间差等于某个值m时,这些变量便会相关。已知这些变量中每个变量的边际分布(由信号在每个观察点处存在的概率指定)及其相关函数。使用创新方法可以获得线性递归滤波和定点平滑算法,而无需状态空间模型生成信号,而只需观察方程中涉及的过程的协方差函数即可。 (C)2008 Elsevier Inc.保留所有权利。

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