Particle Flow Gaussian Particle Filter

Karthik Comandur, Yunpeng Li, S. Nannuru
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引用次数: 3

Abstract

State estimation in non-linear models is performed by tracking the posterior distribution recursively. A plethora of algorithms have been proposed for this task. Among them, the Gaussian particle filter uses a weighted set of particles to construct a Gaussian approximation to the posterior. In this paper, we propose to use invertible particle flow methods, derived under the Gaussian boundary conditions for a flow equation, to generate a proposal distribution close to the posterior. The resultant particle flow Gaussian particle filter (PFGPF) algorithm retains the asymptotic properties of Gaussian particle filters, with the potential for improved state estimation performance in high-dimensional spaces. We compare the performance of PFGPF with the particle flow filters and particle flow particle filters in two challenging numerical simulation examples.
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粒子流高斯粒子滤波
非线性模型的状态估计是通过递归跟踪后验分布来实现的。针对这项任务,已经提出了大量的算法。其中,高斯粒子滤波使用一组加权粒子来构造一个高斯逼近后验。在本文中,我们提出使用在高斯边界条件下导出的流动方程的可逆粒子流方法来生成接近后验的建议分布。所得粒子流高斯粒子滤波(PFGPF)算法保留了高斯粒子滤波的渐近特性,具有提高高维空间状态估计性能的潜力。在两个具有挑战性的数值模拟实例中,我们比较了PFGPF与颗粒流滤波器和颗粒流粒子滤波器的性能。
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