Bayesian Landmark Learning for Mobile Robot Localization

被引:1
作者
Sebastian Thrun
机构
[1] Carnegie Mellon University,Computer Science Department and Robotics Institute
来源
Machine Learning | 1998年 / 33卷
关键词
artificial neural networks; Bayesian analysis; feature extraction; landmarks; localization; mobile robots; positioning;
D O I
暂无
中图分类号
学科分类号
摘要
To operate successfully in indoor environments, mobile robots must be able to localize themselves. Most current localization algorithms lack flexibility, autonomy, and often optimality, since they rely on a human to determine what aspects of the sensor data to use in localization (e.g., what landmarks to use). This paper describes a learning algorithm, called BaLL, that enables mobile robots to learn what features/landmarks are best suited for localization, and also to train artificial neural networks for extracting them from the sensor data. A rigorous Bayesian analysis of probabilistic localization is presented, which produces a rational argument for evaluating features, for selecting them optimally, and for training the networks that approximate the optimal solution. In a systematic experimental study, BaLL outperforms two other recent approaches to mobile robot localization.
引用
收藏
页码:41 / 76
页数:35
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[1]  
Buhmann J.(1995)The mobile robot Rhino AI Magazine 16 31-38
[2]  
Burgard W.(1995)Prototypes, location, and associative networks (PLAN): Towards a unified theory of cognitive mapping Cognitive Science 19 1-51
[3]  
Cremers A.B.(1991)Blanche—An experiment in guidance and navigation of an autonomous robot vehicle IEEE Transactions on Robotics and Automation 7 193-204
[4]  
Fox D.(1994)Modeling a dynamic environment using a Bayesian multiple hypothesis approach Artificial Intelligence 66 311-344
[5]  
Hofmann T.(1997)The dynamic window approach to collision avoidance IEEE Robotics and Automation Magazine 4 23-33
[6]  
Schneider F.(1982)Scattered data interpolation: Tests of some methods Mathematics of Computation 38 181-200
[7]  
Strikos J.(1993)Navigation system based on ceiling landmark recognition for autonomous mobile robot Proceedings of the International Conference on Industrial Electronics Control and Instrumentation 1 1466-1471
[8]  
Thrun S.(1989)Multilayer feed-forward networks are universal approximators Neural Networks 2 359-366
[9]  
Chown E.(1960)A new approach to linear filtering and prediction problems Transactions ASME, Journal of Basic Engineering 82 35-45
[10]  
Kaplan S.(1990)Helpmate autonomous mobile robot navigation system Proceedings of the SPIE Conference on Mobile Robots 2352 190-198