Action-Driven Perception for a Humanoid

Jens Kleesiek , Stephanie Badde , Stefan Wermter , Andreas K. Engel
Agents and Artificial Intelligence, Revised Selected Papers of the 4th International Conference on Agents and Artificial Intelligence (ICAART 2012), Editors: Filipe, J.; A, Fred, Volume 358, pages 83--99, doi: 10.1007/978-3-642-36907-0_6 - Feb 2012
Associated documents :  
We present active object categorization experiments with a real humanoid robot. For this purpose, the training algorithm of a recurrent neural network with parametric bias has been extended with adaptive learning rates. This modification leads to an increase in training speed. Using this new training algorithm we conducted three experiments aiming at object categorization. While holding different objects in its hand, the robot executes a motor sequence that induces multi-modal sensory changes. During learning, these high-dimensional perceptions are ‘engraved’ in the network. Simultaneously, low-dimensional PB values emerge unsupervised. The geometrical relation of these PB vectors can then be exploited to infer relations between the original high dimensional time series characterizing different objects. Even sensations belonging to unknown objects can be discriminated from known (learned) ones and kept apart from each other reliably. Additionally, we show that the network tolerates noisy sensory signals very well.

 

@InProceedings{KBWE12, 
 	 author =  {Kleesiek, Jens and Badde, Stephanie and Wermter, Stefan and Engel, Andreas K.},  
 	 title = {Action-Driven Perception for a Humanoid}, 
 	 booktitle = {Agents and Artificial Intelligence, Revised Selected Papers of the 4th International Conference on Agents and Artificial Intelligence (ICAART 2012)},
 	 editors = {Filipe, J.; A, Fred},
 	 number = {},
 	 volume = {358},
 	 pages = {83--99},
 	 year = {2012},
 	 month = {Feb},
 	 publisher = {Springer Berlin},
 	 doi = {10.1007/978-3-642-36907-0_6}, 
 }