基于混合条件密度近似的非线性估计混合密度滤波器

Marco F. Huber, U. Hanebeck
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引用次数: 17

摘要

在非线性贝叶斯估计中,通常不可避免地要包含精确估计算法的近似描述。有两种可能的逼近方法:逼近非线性随机系统模型或逼近先验概率密度函数。本文提出的混合密度滤波器的核心思想是逼近非线性系统,从而逼近条件密度。这些密度将当前系统状态与预测时的未来系统状态或测量更新时的潜在测量值非线性地联系起来。由狄拉克函数和高斯密度组成的混合密度用于最优逼近。本文讨论了处理条件密度近似的优化问题。此外,基于混合密度的特殊结构,推导出有效的估计算法,得到系统状态密度的高斯混合表示。
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The hybrid density filter for nonlinear estimation based on hybrid conditional density approximation
In nonlinear Bayesian estimation it is generally inevitable to incorporate approximate descriptions of the exact estimation algorithm. There are two possible ways to involve approximations: Approximating the nonlinear stochastic system model or approximating the prior probability density function. The key idea of the introduced novel estimator called Hybrid Density Filter relies on approximating the nonlinear system, thus approximating conditional densities. These densities nonlinearly relate the current system state to the future system state at predictions or to potential measurements at measurement updates. A hybrid density consisting of both Dirac delta functions and Gaussian densities is used for an optimal approximation. This paper addresses the optimization problem for treating the conditional density approximation. Furthermore, efficient estimation algorithms are derived based upon the special structure of the hybrid density, which yield a Gaussian mixture representation of the system state's density.
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