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基于强跟踪UKF 的自适应SLAM 算法
引用本文:张文玲,朱明清,陈宗海. 基于强跟踪UKF 的自适应SLAM 算法[J]. 机器人, 2010, 32(2): 1
作者姓名:张文玲  朱明清  陈宗海
作者单位:中国科学技术大学自动化系,安徽,合肥,230027
基金项目:国家自然科学基金资助项目(60575033,60804020);;国家863计划资助项目(2007AA04Z227)
摘    要:针对无迹卡尔曼滤波(UKF)缺乏在线自适应调整能力,导致系统状态估计精度较低的问题,提出了一种将强跟踪滤波器(STF)与UKF 相结合的SLAM 算法.该算法对于UKF 中每个采样点采用STF 进行更新,获得优化滤波增益,抑制噪声对系统状态估计的影响,使系统状态估计迅速收敛到真实值附近.仿真实验对比了当前几种SLAM 算法在不同噪声环境下的性能,实验表明,基于强跟踪UKF 的自适应SLAM 算法具有更好的鲁棒性和自适应性.

关 键 词:同时定位与地图创建  UKF-SLAM  强跟踪滤波器  自适应滤波

An Adaptive SLAM Algorithm Based on Strong Tracking UKF
ZHANG Wenling,ZHU Mingqing,CHEN Zonghai. An Adaptive SLAM Algorithm Based on Strong Tracking UKF[J]. Robot, 2010, 32(2): 1
Authors:ZHANG Wenling  ZHU Mingqing  CHEN Zonghai
Affiliation:Department of Automation;University of Science and Technology of China;Hefei 230027;China
Abstract:Unscented Kalman filter (UKF) is lack of adaptive on-line adjustment ability that seriously decreases the estimation accuracy of system state. To deal with this problem, this paper proposes an improved SLAM (simultaneous localization and mapping) algorithm that combines the strengths of strong tracking filter (STF) and UKF. Each sampling point of UKF is updated by STF, the effects of noises on system state estimation are suppressed by optimizing filter gains, and the system state estimation converges to rea...
Keywords:simultaneous localization and mapping  UKF-SLAM  strong tracking filter  adaptive filter  
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