DocumentCode
3012671
Title
Supervised learning of internal models for autonomous goal-oriented robot navigation using Reservoir Computing
Author
Antonelo, Eric A. ; Schrauwen, Benjamin
Author_Institution
BOF grant from Univ. Gent, Ghent, Belgium
fYear
2010
fDate
3-7 May 2010
Firstpage
2959
Lastpage
2964
Abstract
In this work we propose a hierarchical architecture which constructs internal models of a robot environment for goal-oriented navigation by an imitation learning process. The proposed architecture is based on the Reservoir Computing paradigm for training Recurrent Neural Networks (RNN). It is composed of two randomly generated RNNs (called reservoirs), one for modeling the localization capability and one for learning the navigation skill. The localization module is trained to detect the current and previously visited robot rooms based only on 8 noisy infra-red distance sensors. These predictions together with distance sensors and the desired goal location are used by the navigation network to actually steer the robot through the environment in a goal-oriented manner. The training of this architecture is performed in a supervised way (with examples of trajectories created by a supervisor) using linear regression on the reservoir states. So, the reservoir acts as a temporal kernel projecting the inputs to a rich feature space, whose states are linearly combined to generate the desired outputs. Experimental results on a simulated robot show that the trained system can localize itself within both simple and large unknown environments and navigate successfully to desired goals.
Keywords
control engineering computing; learning (artificial intelligence); mobile robots; navigation; path planning; recurrent neural nets; regression analysis; RNN; autonomous goal-oriented robot navigation; goal location; hierarchical architecture; imitation learning process; infrared distance sensors; internal models; linear regression; localization capability; localization module; navigation network; navigation skill; recurrent neural networks; reservoir computing; reservoir states; robot environment; robot rooms; simulated robot; supervised learning; Computer architecture; Computer networks; Infrared sensors; Navigation; Orbital robotics; Recurrent neural networks; Reservoirs; Robot sensing systems; Supervised learning; Working environment noise;
fLanguage
English
Publisher
ieee
Conference_Titel
Robotics and Automation (ICRA), 2010 IEEE International Conference on
Conference_Location
Anchorage, AK
ISSN
1050-4729
Print_ISBN
978-1-4244-5038-1
Electronic_ISBN
1050-4729
Type
conf
DOI
10.1109/ROBOT.2010.5509212
Filename
5509212
Link To Document