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Initialization of the Kalman Filter without Assumptions on the Initial State

机译:Kalman滤波器的初始化而不对初始状态的假设

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In absence of covariance data, Kalman filters are usually initialized by guessing the initial state. Making the variance of the initial state estimate large makes sure that the estimate converges quickly and that the influence of the initial guess soon will be negligible. If, however, only very few measurements are available during the estimation process and an estimate is wanted as soon as possible, this might not be enough. This paper presents a method to initialize the Kalman filter without any knowledge about the distribution of the initial state and without making any guesses.
机译:在没有协方差数据的情况下,Kalman过滤器通常通过猜测初始状态来初始化。使初始状态的方差估计大量确保估计迅速收敛,并且最初猜测的影响很快将可以忽略不计。然而,如果在估计过程中仅提供了很少的测量,并且尽快想要估计,这可能还不够。本文介绍了初始化卡尔曼滤波器的方法,而无需任何关于初始状态分布的知识,而不会猜测任何猜测。

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