利用不相关变换的高斯和滤波进行非线性估计

Yingjie Zhang, Jian Lan
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引用次数: 4

摘要

对于非线性估计,高斯和滤波器(GSF)提供了一个灵活有效的框架。它通过高斯混合近似后验概率密度函数(pdf),其中每个高斯分量使用线性最小均方误差(LMMSE)估计量获得。然而,对于具有较大测量噪声的高度非线性问题,LMMSE估计器的估计性能在很大程度上受到限制,因为它仅在线性估计器类别中是最好的。这可能会进一步降低GSF的性能,特别是如果使用少量这些组件。为了提高估计性能,本文提出了一种基于高斯和不相关转换(UC)的滤波器(GS-UCF),该滤波器采用最近提出的基于不相关转换的滤波器(UCF)来获取高斯分量进行高斯和滤波。UCF是LMMSE估计器,使用由其不相关转换增强的测量,可以优于原始LMMSE估计器。因此,UCF得到的高斯分量的前两个矩比LMMSE估计得到的更精确,进一步提高了GSF的性能。作为UCF和GSF框架的集成,所得到的滤波器被命名为高斯和不相关转换滤波器(GS-UCF)。仿真结果表明了该估计方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian sum filtering using uncorrelatec conversion for nonlinear estimation
For nonlinear estimation, the Gaussian sum filter (GSF) provides a flexible and effective framework. It approximates the posterior probability density function (pdf) by a Gaussian mixture in which each Gaussian component is obtained using a linear minimum mean squared error (LMMSE) estimator. However, for a highly nonlinear problem with large measurement noise, the estimation performance of the LMMSE estimator is largely limited, since it is the best only within the class of linear estimators. This may further degrade the performance of the GSF, especially if a small number of these components are used. To improve the estimation performance, this paper proposes a Gaussian sum uncorrelated conversion (UC) based filter (GS-UCF), where the recently proposed uncorrelated conversion based filter (UCF) is applied to obtain the Gaussian components for Gaussian sum filtering. The UCF which is the LMMSE estimator using the measurement augmented by its uncorrelated conversions can outperform the original LMMSE estimator. Thus, the first two moments of the Gaussian component obtained by UCF can be more accurate than those obtained by the LMMSE estimator, which further improves the performance of the GSF. As an integration of the UCF and the GSF framework, the obtained filter is named as the Gaussian sum uncorrelated conversion based filter (GS-UCF). Simulation results show the effectiveness of the proposed estimator.
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