引用本文:刘,任雪梅,A. B. RAD.基于信息势能的鲁棒估计器及其在同时定位与地图构建问题中的应用[J].控制理论与应用,2011,28(7):901~906.[点击复制]
LIU Yan,REN Xue-mei,RAD A B.Robust estimator based on information potential and its application to simultaneous localization and mapping[J].Control Theory and Technology,2011,28(7):901~906.[点击复制]
基于信息势能的鲁棒估计器及其在同时定位与地图构建问题中的应用
Robust estimator based on information potential and its application to simultaneous localization and mapping
摘要点击 1398  全文点击 1339  投稿时间:2010-01-12  修订日期:2010-09-06
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DOI编号  10.7641/j.issn.1000-8152.2011.7.CCTA100040
  2011,28(7):901-906
中文关键词  信息势能  自主机器人  鲁棒估计  定位与地图构建
英文关键词  information potential  autonomous robot  robust estimator  localization and mapping
基金项目  国家自然科学基金资助项目(60474033,60974046).
作者单位E-mail
刘* 北京理工大学 自动化科学学院 iamliuyan@yahoo.com.cn 
任雪梅 北京理工大学 自动化科学学院  
A. B. RAD 西蒙菲沙大学 机械电子系  
中文摘要
      提出了一种基于信息势能鲁棒估计器来解决机器人室内的同时定位与地图构建(SLAM)问题. 结构化的室内环境可以用线段近似表示. 然而动态环境中, 测距传感器测得的数据通常湮没在大量的噪声信号中. 本文采用“分割与合并”(split-and-merge)方法进行线段的分类, 根据信息势能的性能指标衡量每个采样数据对该线段的信息贡献量. 按照信息优化理论设计估计器, 选择信息量贡献大的样本点作为信息内点提取线段参数, 构建局部地图. 采用粒子滤波器进行地图及机器人路径的更新. 采用递推的方法估计信息势能, 降低了对样本点的信息量贡献做估计时的复杂度. 仿真和实验结果证明, 本文所提出的方法具有较强的鲁棒性, 提高了SLAM策略的准确性和实时性.
英文摘要
      We present a novel robust estimator based on information potential optimization techniques and apply it to simultaneous localization and mapping on segment-based maps. Structured indoor environment can be efficiently described with Segment-based maps. Usually, in dynamic environment, sample data collected by range-finders suffer from noises and disturbances. Sample data are divided into clusters with split-and-merge. Inliers of the segment are selected according to the information contribution which is measured by information potential. After the local map is built, particle filters are adopted to update robot poses and maps. The recursive information potential reduces computations of information contribution of each sample. Simulations and experimental results validate the strong robustness of the proposed estimator, and the accuracy and efficiency of the proposed strategy based on the robust estimator.