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Gaussian Particle Flow Implementation of PHD Filter

机译:PHD滤波器的高斯粒子流实现

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摘要

Particle filter and Gaussian mixture implementations of random finite set niters have been proposed to tackle the issue of jointly estimating the number of targets and their states. The Gaussian mixture PHD (GM-PHD) filter has a closed-form expression for the PHD for linear and Gaussian target models, and extensions using the extended Kalman filter or unscented Kalman Filter have been developed to allow the GM-PHD filter to accommodate mildly nonlinear dynamics. Errors resulting from linearization or model mismatch are unavoidable. A particle filter implementation of the PHD filter (PF-PHD) is more suitable for nonlinear and non-Gaussian target models. The particle filter implementations are much more computationally expensive and performance can suffer when the proposal distribution is not a good match to the posterior. In this paper, we propose a novel implementation of the PHD filter named the Gaussian particle flow PHD filter (GPF-PHD). It employs a bank of particle flow filters to approximate the PHD; these play the same role as the Gaussian components in the GM-PHD filter but are better suited to non-linear dynamics and measurement equations. Using the particle flow filter allows the GPF-PHD filter to migrate particles to the dense regions of the posterior, which leads to higher efficiency than the PF-PHD. We explore the performance of the new algorithm through numerical simulations.
机译:为了解决联合估计目标数目及其状态的问题,已经提出了随机有限集分类器的粒子滤波和高斯混合实现。高斯混合PHD(GM-PHD)滤波器对线性和高斯目标模型的PHD具有闭合形式的表达式,并且已经开发了使用扩展卡尔曼滤波器或无味卡尔曼滤波器的扩展,以允许GM-PHD滤波器适度适应非线性动力学。线性化或模型不匹配导致的错误是不可避免的。 PHD滤波器(PF-PHD)的粒子滤波器实现更适合于非线性和非高斯目标模型。当提议分布与后验不能很好地匹配时,粒子过滤器的实现在计算上要昂贵得多,并且性能可能会受到影响。在本文中,我们提出了一种新颖的PHD滤波器实现方案,称为高斯粒子流PHD滤波器(GPF-PHD)。它采用了一组颗粒流过滤器来近似PHD。它们与GM-PHD滤波器中的高斯分量起着相同的作用,但更适合于非线性动力学和测量方程。使用颗粒流过滤器可使GPF-PHD过滤器将颗粒迁移到后部的密集区域,这比PF-PHD具有更高的效率。我们通过数值模拟探索了新算法的性能。

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