测绘学报

• 学术论文 • 上一篇    下一篇

基于均值漂移的粒子滤波算法设计及其在导航数据处理中的应用

宫轶松1,归庆明2,李保利3,乔书波4,张灵敏5   

  1. 1. 61618部队
    2. 信息工程大学理学院
    3. 中国卫星导航定位应用管理中心
    4. 解放军信息工程大学测绘学院
    5. 河北科技师范学院
  • 收稿日期:2011-03-24 修回日期:1900-01-01 出版日期:2011-05-05 发布日期:2015-06-24
  • 通讯作者: 归庆明

Design of particle filtering algorithm based on mean shift and application in navigation data processing

  • Received:2011-03-24 Revised:1900-01-01 Online:2011-05-05 Published:2015-06-24

摘要: 针对标准粒子滤波算法中存在的计算量大和粒子的权值退化的缺陷,本文将均值漂移(Mean-Shift,简称MS)算法和PF算法进行融合,设计基于均值漂移搜索算法的粒子滤波新算法。该新算法仍遵从粒子滤波算法的计算框架,基本原理是利用MS算法对粒子的聚类作用,将均值漂移思想融合到粒子滤波算法的重要性采样过程中,对粒子集进行确定性搜索,使每个粒子收敛于局部最优值,这样粒子的状态表示更接近真实的状态分布,因此只需较少的粒子数便可达到未嵌入MS的使用大量粒子数的粒子滤波状态估计的性能,从而在缓解粒子的权值退化的同时提高粒子滤波算法的实时性。大量的数值试验和对GPS/DR组合导航数据处理的结果验证了新方法的有效性。

Abstract: Considering the degeneracy of particle weight and the large amount of calculation existing in the standard particle filtering algorithm, the mean shift algorithm and particle filtering algorithm are fused, then a new particle filtering algorithm is designed based on the mean shift searching algorithm. This approach still obeys the computational outline of the standard particle filtering algorithm. The basic principle of this algorithm is to embed the mean shift searching process into the important sampling process of the particle filtering method via the clustering characteristics of the mean shift algorithm, to have a determinant searching to the particle set, and make each particle converge to local optimal value, approximates the true state distribution by means of the particle clustering of the mean-shift algorithm, and thus achieves good estimation results and improves the status of real time by requiring only a small number of particles compared with the standard PF algorithm on overcoming the defects, such as the degeneracy of the phenomenon of particle weight and the large amount of calculation. The results of a large amount of computational experiments and the GPS / DR integrated navigation experiment show the effectiveness of the new approach.