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基于自适应重采样的同步定位与地图构建
引用本文:曲丽萍,王宏健,边信黔.基于自适应重采样的同步定位与地图构建[J].探测与控制学报,2012,34(3):76-81.
作者姓名:曲丽萍  王宏健  边信黔
作者单位:1. 哈尔滨工程大学自动化学院,黑龙江哈尔滨150001;北华大学电气信息工程学院,吉林吉林132021
2. 哈尔滨工程大学自动化学院,黑龙江哈尔滨,150001
基金项目:国家自然科学基金项目资助,教育部高等学校博士学科点专项科研基金项目资助
摘    要:就移动机器人同步定位与地图构建展开研究,针对FastSLAM算法产生的粒子退化及粒子集重采样问题,提出了基于自适应重采样的FastSLAM算法。该算法首先计算粒子集的有效样本数,确定粒子退化程度。然后设定有效样本阈值,当有效样本数小于阈值时则进行重采样。仿真表明:与EKF-SLAM相比,基于自适应重采样FastSLAM重采样效率更高,鲁棒性更好,在机器人路径和陆标位置的估计上,也具有更高的精度。

关 键 词:同步定位与地图构建  扩展卡尔曼滤波器  Rao-Blackwellise粒子滤波器  自适应重采样

Simultaneous Localization and Mapping Based on Adaptive Resampling
QU Liping , WANG Hongjian , BIAN Xinqian.Simultaneous Localization and Mapping Based on Adaptive Resampling[J].Journal of Detection & Control,2012,34(3):76-81.
Authors:QU Liping  WANG Hongjian  BIAN Xinqian
Affiliation:1(1.College of Automation,Harbin Engineering University,Harbin 150001,China; 2.Information Engineering School,BeiHua University,Jilin 132021,China)
Abstract:We studied robot simultaneous localization and mapping.Aiming at the problems of particle degeneration and resampling of the particle set,FastSLAM algorithm based on adaptive resampling was presented.First,the algorithm calculated the number of the effective samples to confirm the degree of particle degeneration,and then set the threshold of the effective samples.When the number of the effective samples was less than the threshold,resampling would be carried out.The simulation result showed that,compared with EKF-SLAM,FastSLAM algorithm based on adaptive resampling had higher resampling validity,better robustness and better estimation precise of robot path and the landmark positions estimation.
Keywords:simultaneous localization  mapping  EKF filter  Rao-Blackwellise particle filter  adaptive resample
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