基于分集制导的改进粒子滤波

Jinxia Yu, Yongli Tang, Xianwei Liu, Qian Zhao
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引用次数: 0

摘要

近年来,粒子滤波技术在许多领域得到了广泛的应用。结合粒子滤波器的不足分析,提出了一种基于分集制导的改进粒子滤波器。首先,基于有效样本量和总体多样性因子两种多样性指标对粒子滤波器的自适应重采样步骤进行了调整;并且将重采样后的粒子突变操作整合到PF中,保证了粒子集的多样性。然后,采用混合建议分布来考虑最新观测测量的当前信息。同时,利用退火参数控制先验函数与似然函数的比例。通过matlab 7.0仿真程序从固定的视觉观测点跟踪单个目标运动,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved particle filter based on diversity guidance
Particle filter has been widely applied into many fields in recent years. Combined with the deficiency analysis of particle filter, an improved particle filter based on diversity guidance is proposed. Firstly, the adaptive resampling step in particle filter is tuned based on two diversity measures which are effective sample size and population diversity factor. Moreover, the operation of particle mutation after resampling is integrated into PF so as to assure the diversity of particle sets. Then, a hybrid proposal distribution is adopted to consider current information of the latest observed measurement. At the same time, annealing parameter is utilized to control the proportional of priori function and likelihood function. With the simulation program using matlab 7.0 to track a single target motion from a fixed visual observation points, the validity of the proposed method is verified.
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