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A Decomposed Probability Hypothesis Density (DPHD) Tracker in a Multi-target Tracking System Verified with a Linear Gaussian Model and a Simulated Laser Tracking System

机译:线性高斯模型和模拟激光跟踪系统验证的多目标跟踪系统中的分解概率假设密度(DPHD)跟踪器

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摘要

The probability hypothesis density (PHD) filter is a practical method to jointly estimate the number and states of multiple targets from the observations from laser and other types of sensors including clutter. Still, the PHD filter cannot provide identities of individual target trajectories. In this paper we propose a decomposed probability hypothesis density (DPHD) multi-target tracker with the track management. This scheme uses PHD components to represent each target distribution respectively instead of PHD itself, and track their motions by associating the PHD components between frames, meanwhile alleviating the false tracks by detecting and pruning possible clutter located at the confirmed targets. Simulation results demonstrate that the proposed PHD tracker has provided more accurate and efficient target trajectory estimating.
机译:概率假设密度(PHD)滤波器是一种实用的方法,可以根据激光和其他类型的传感器(包括杂波)的观测结果,共同估算多个目标的数量和状态。尽管如此,PHD过滤器仍无法提供各个目标轨迹的身份。在本文中,我们提出了一种具有轨道管理功能的分解概率假设密度(DPHD)多目标跟踪器。该方案使用PHD分量代替PHD本身分别表示每个目标分布,并通过在帧之间关联PHD分量来跟踪它们的运动,同时通过检测和修剪位于已确认目标处的可能杂波来减轻错误轨道。仿真结果表明,所提出的PHD跟踪器提供了更准确,更有效的目标轨迹估计。

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