Joint multiple target tracking and classification using the Unscented Kalman Particle PHD filter

M. Melzi, A. Ouldali
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引用次数: 9

Abstract

The probability hypothesis density (PHD) is the first order statistical moment of the multiple target posterior density; the PHD recursion involves multiple integrals that generally have no closed form solutions. A SMC implementation of the PHD filter has been proposed to tackle the issue of joint estimating the number of targets and their states. However, because the state transition does not take into account the most recent observation, the particles drawn from prior transition may have very low likelihood and their contributions to the posterior estimation become negligible. In this paper, we propose a novel algorithm named Unscented Kalman Particle PHD filter (UK-P-PHD). It consists of a P-PHD filter that uses an Unscented Kalman filter to generate the importance proposal distribution; the UKF allows the P-PHD filter to incorporate the latest observations into a prior updating routine and thus, generates proposal distributions that match the true posterior more closely. Simulation shows that the proposed filter outperforms the P-PHD filter.
基于无气味卡尔曼粒子PHD滤波的联合多目标跟踪与分类
概率假设密度(PHD)是多目标后验密度的一阶统计矩;PHD递归涉及多个积分,通常没有闭合形式的解。为了解决目标数量及其状态的联合估计问题,提出了PHD滤波器的SMC实现。然而,由于状态转换没有考虑到最近的观测,从先前转换中提取的粒子可能具有非常低的可能性,并且它们对后验估计的贡献可以忽略不计。本文提出一种新的无气味卡尔曼粒子PHD滤波算法(UK-P-PHD)。它由P-PHD滤波器组成,该滤波器使用Unscented卡尔曼滤波器生成重要建议分布;UKF允许P-PHD过滤器将最新的观察结果合并到先前的更新例程中,从而生成更接近真实后验的建议分布。仿真结果表明,该滤波器的性能优于P-PHD滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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