基于自适应遗传算法的协方差交叉和粒子滤波的分布式传感器融合

Siyuan Zou, Dongying Li, Yu Wenxian
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摘要

本文提出了一种基于自适应遗传算法的粒子滤波与快速协方差交叉算法相结合的分布式传感器目标跟踪算法。在重采样过程中采用自适应遗传算法,克服了粒子滤波中的粒子剥夺问题。在每个遗传粒子过滤器中,直接保留权重较大的粒子作为子代的一部分,而将其他粒子与其权重进行杂交或突变,然后选择权重较大的粒子作为子代的另一部分。它不同于传统的自适应遗传粒子滤波。在粒子滤波后,对每个传感器进行基于快速协方差相交的分布式数据融合。仿真结果表明,与SIR粒子滤波相比,该算法得到了更精确的目标估计。
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Distributed sensor fusion using covariance intersection and particle filtering based on adaptive genetic algorithm
In this paper, a novel algorithm is proposed for target tracking with distributed sensors by combining particle filtering based on the adaptive genetic algorithm and the fast covariance intersection algorithm. The adaptive genetic algorithm is applied in the resampling process to overcome the problem of particle deprivation in the particle filtering. In each genetic particle filter, the particles with large weights are retained as a part of the offspring directly, while the other particles are hybridized or mutated with their weights and then we select the particles with larger weights as the other part of the offspring. It is different from the conventional adaptive genetic particle filtering. The distributed data fusion based on fast covariance intersection is processed on each sensor after the particle filtering. The simulation results show that the algorithm obtains more accurate estimation of the target comparing with SIR particle filtering.
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