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首页> 外文期刊>Mathematical and Computational Applications >Fuzzy Grey Prediction-Based Particle Filter for Object Tracking
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Fuzzy Grey Prediction-Based Particle Filter for Object Tracking

机译:基于模糊灰色预测的粒子滤波目标跟踪

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摘要

A particle filter is a powerful tool for object tracking based on sequential Monte Carlo methods under a Bayesian estimation framework. A major challenge for a particle filter in object tracking is how to allocate particles to a high-probability density area. A particle filter does not take into account the historical prior information on the generation of the proposal distribution and, thus, it cannot approximate posterior density well. Therefore, a new fuzzy grey prediction-based particle filter (called FuzzyGP-PF) for object tracking is proposed in this paper. First, a new prediction model which was based on fuzzy mathematics theory and grey system theory was established, coined the Fuzzy-Grey-Prediction (FGP) model. Then, the history state sequence is utilized as prior information to predict and sample a part of particles for generating the proposal distribution in the particle filter. Simulations are conducted in the context of two typical maneuvering motion scenarios and the results indicate that the proposed FuzzyGP-PF algorithm can exhibit better overall performance in object tracking.
机译:粒子滤波器是在贝叶斯估计框架下基于顺序蒙特卡洛方法进行对象跟踪的强大工具。粒子过滤器在对象跟踪中的主要挑战是如何将粒子分配到高概率密度区域。粒子过滤器没有考虑到提案分配的产生的历史先验信息,因此无法很好地近似后验密度。因此,本文提出了一种新的基于模糊灰色预测的目标跟踪粒子滤波器(FuzzyGP-PF)。首先,建立了基于模糊数学理论和灰色系统理论的新预测模型,即模糊灰色预测(FGP)模型。然后,将历史状态序列用作先验信息,以预测和采样一部分粒子,以在粒子过滤器中生成提议分布。在两种典型的机动运动场景下进行了仿真,结果表明所提出的FuzzyGP-PF算法在目标跟踪中可以表现出更好的整体性能。

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