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Object Tracking Using Genetic Evolution Based Kernel Particle Filter

机译:基于基于遗传演化的核粒子滤波器的对象跟踪

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A new particle filter, which combines genetic evolution and kernel density estimation, is proposed for moving object tracking. Particle filter (PF) solves non-linear and non-Gaussian state estimation problems in Monte Carlo simulation using importance sampling. Kernel particle filter (KPF) improves the performance of PF by using density estimation of broader kernel. However, it has the problem which is similar to the impoverishment phenomenon of PF. To deal with this problem, genetic evolution is introduced to form new filter. Genetic operators can ameliorate the diversity of particles. At the same time, genetic iteration drives particles toward their close local maximum of the posterior probability. Simulation results show the performance of the proposed approach is superior to that of PF and KPF.
机译:提出了一种新的粒子滤波器,其结合了遗传演化和核密度估计,用于移动物体跟踪。粒子滤波器(PF)使用重要性采样解决Monte Carlo仿真中的非线性和非高斯状态估计问题。通过使用更广泛的内核的密度估计,内核粒子过滤器(KPF)提高了PF的性能。然而,它具有类似于PF的贫困现象的问题。要处理这个问题,引入了遗传演化以形成新的过滤器。遗传算子可以改善粒子的多样性。同时,遗传迭代驱动颗粒朝着它们的密切局部最大概率驱动。仿真结果表明,所提出的方法的性能优于PF和KPF的性能。

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