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State estimation using an approximate reduced statistics algorithm

机译:使用近似简化统计算法进行状态估计

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摘要

The problem of state estimation using nonlinear additive Gaussian noise measurements is addressed. A geometric model for the posterior state density is assumed based on a multidimensional Haar basis representation. An approximate reduced statistics (ARS) algorithm, suggested by the parameter estimator of Kulhavy is then developed, using successive minimization of relative entropy between model densities and an approximate posterior density. The state estimator thus derived is applied to a bearings-only target tracking problem in a multiple sensor scenario.
机译:解决了使用非线性加性高斯噪声测量进行状态估计的问题。基于多维Haar基表示,假定后状态密度的几何模型。然后,使用模型密度和近似后验密度之间的相对熵的连续最小化,开发由Kulhavy的参数估计器建议的近似简化统计(ARS)算法。这样得出的状态估计器将应用于多传感器情况下的纯方位目标跟踪问题。

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