一种新的类高斯密度模型及其在目标跟踪中的应用

Xifeng Li, Yongle Xie
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引用次数: 0

摘要

概率密度函数在许多涉及随机过程的应用中起着至关重要的作用。在一定的性能条件下,对实时PDF进行良好的逼近,有助于获取系统的未知信息。利用这类信息,可以有效地估计描述真实系统的各种模型的许多特征,特别是对于非线性非高斯随机系统。本文基于Tsallis熵,给出了一些具有明确物理意义的单参数pdf。我们在这里计算的pdf都是类高斯分布,当Tsallis熵的参数趋近于零时达到高斯分布。在此基础上,提出了高斯粒子滤波(GPF)的一种扩展,即类高斯粒子滤波(GLPF),仿真结果表明,与类高斯粒子滤波相比,类高斯粒子滤波是一种更有效的非线性随机系统状态估计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Gaussian-Like Density Model and Its Application to Object-Tracking
Probability density function (PDF) plays a vital role in many applications involving stochastic process. A good approximation for real-time PDF conditioned on certain performance criterion could help to acquire unknown information about the system. With the help of this kind of information, which was not available earlier, many features of various models that describe the real system can be estimated effectively, especially for non-linear non-Gaussian stochastic system. In this paper, we elucidate some PDFs with only one parameter that have a definite physical meaning based on Tsallis entropy. The PDFs that we calculated here are all Gaussian-like, and Gaussian distribution is attained when the parameter of Tsallis entropy approaches zero. Based on these explicit form of Gaussian-like PDFs we calculated here, an extension of Gaussian particle filter (GPF) called Gaussian-like particle filter (GLPF) is proposed and the simulation results show that the GLPF is a more effective way to estimate the state of non-linear stochastic system compared with the GPF.
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