Approximate Nonlinear Bayesian Estimation Based on Lower and Upper Densities

Vesa Klumpp, D. Brunn, U. Hanebeck
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引用次数: 6

Abstract

Recursive calculation of the probability density function characterizing the state estimate of a nonlinear stochastic dynamic system in general cannot be performed exactly, since the type of the density changes with every processing step and the complexity increases. Hence, an approximation of the true density is required. Instead of using a single complicated approximating density, this paper is concerned with bounding the true density from below and from above by means of two simple densities. This provides a kind of guaranteed estimator with respect to the underlying true density, which requires a mechanism for ordering densities. Here, a partial ordering with respect to the cumulative distributions is employed. Based on this partial ordering, a modified Bayesian filter step is proposed, which recursively propagates lower and upper density bounds. A specific implementation for piecewise linear densities with finite support is used for demonstrating the performance of the new approach in simulations
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基于上下密度的近似非线性贝叶斯估计
表征非线性随机动力系统状态估计的概率密度函数一般不能精确地进行递推计算,因为密度的类型随着每一步的处理而变化,并且复杂性增加。因此,需要一个真实密度的近似值。本文不是使用单一的复杂近似密度,而是通过两个简单密度从下到上限定真实密度。这提供了一种关于潜在真密度的有保证的估计量,这需要一种对密度排序的机制。这里,对累积分布采用偏序。基于这种偏序,提出了一种改进的贝叶斯滤波步骤,该步骤递归地传播上下密度边界。用有限支持分段线性密度的具体实现,在仿真中验证了新方法的性能
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