Gaussian particle filtering for tracking maneuvering targets

T. Ghirmai
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引用次数: 8

Abstract

Tracking for maneuvering targets in the presence of clutter is a challenging problem. In this paper, we present an algorithm for reliable tracking of maneuvering targets based on Gaussian particle filtering (GPF) techniques. It has been shown that sequential Monte Carlo (SMC) methods outperform the various Kalman filter based algorithms for nonlinear tracking models. The SMC, also known as particle filtering, methods approximate the posterior probability distribution of the parameter of interest using discrete random measures. GPF is another variant of the SMC methods which approximates the posterior distribution using a single Gaussian filter. Unlike the standard SMC methods GPF does not require particle resampling. This distinct advantage makes GPF to be easily amenable to parallel implementation using VLSI. The proposed tracker is tested in a fairly complex target trajectory. The target maneuvering is simulated using Markov jump process of three kinematics models having different accelerations. Computer simulations show the proposed algorithm exhibits excellent tracking capability in a fairly complex target maneuvering.
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高斯粒子滤波用于机动目标跟踪
杂波环境下机动目标的跟踪是一个具有挑战性的问题。本文提出了一种基于高斯粒子滤波技术的机动目标可靠跟踪算法。对于非线性跟踪模型,时序蒙特卡罗(SMC)方法优于各种基于卡尔曼滤波的算法。SMC,也称为粒子滤波,方法近似感兴趣的参数的后验概率分布使用离散随机措施。GPF是SMC方法的另一种变体,它使用单个高斯滤波器近似后验分布。与标准SMC方法不同,GPF不需要颗粒重采样。这种独特的优势使得GPF易于使用VLSI进行并行实现。所提出的跟踪器在一个相当复杂的目标轨迹上进行了测试。利用三种不同加速度运动模型的马尔可夫跳跃过程对目标机动进行了仿真。计算机仿真结果表明,该算法在相当复杂的目标机动情况下具有良好的跟踪能力。
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