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Trajectory PHD and CPHD Filters

机译:轨迹PHD和CPHD滤波器

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摘要

This paper presents the probability hypothesis density filter (PHD) and the cardinality PHD (CPHD) filter for sets of trajectories, which are referred to as the trajectory PHD (TPHD) and trajectory CPHD (TCPHD) filters. Contrary to the PHD/CPHD filters, the TPHD/TCPHD filters are able to produce trajectory estimates from first principles. The TPHD filter is derived by recursively obtaining the best Poisson multitrajectory density approximation to the posterior density over the alive trajectories by minimising the Kullback-Leibler divergence. The TCPHD is derived in the same way but propagating an independent identically distributed (IID) cluster multitrajectory density approximation. We also propose the Gaussian mixture implementations of the TPHD and TCPHD recursions, the Gaussian mixture TPHD (GMTPHD) and the Gaussian mixture TCPHD (GMTCPHD), and the L-scan computationally efficient implementations, which only update the density of the trajectory states of the last L time steps.
机译:本文介绍了针对轨迹集的概率假设密度滤波器(PHD)和基数PHD(CPHD)滤波器,分别称为轨迹PHD(TPHD)和轨迹CPHD(TCPHD)滤波器。与PHD / CPHD过滤器相反,TPHD / TCPHD过滤器能够根据第一原理产生轨迹估计。 TPHD滤波器是通过最小化Kullback-Leibler散度来递归地获得最佳的Poisson多轨迹密度近似值到活动轨迹上的后验密度而得出的。 TCPHD以相同的方式导出,但传播了独立的相同分布(IID)群集多轨迹密度近似值。我们还提出了TPHD和TCPHD递归的高斯混合实现,高斯混合TPHD(GMTPHD)和高斯混合TCPHD(GMTCPHD)以及L-scan计算有效的实现,它们仅更新了运动轨迹状态的密度。最后L个时间步骤。

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