DocumentCode
716674
Title
Online unsupervised terrain classification for a compliant tensegrity robot using a mixture of echo state networks
Author
Burms, Jeroen ; Caluwaerts, Ken ; Dambre, Joni
Author_Institution
Electron. & Inf. Syst. Dept., Ghent Univ., Ghent, Belgium
fYear
2015
fDate
26-30 May 2015
Firstpage
4252
Lastpage
4257
Abstract
Truly autonomous robots require the capacity to recognise their surroundings by interpreting their sensorimotor stream. We present an online learning algorithm for training a mixture of echo state network experts that can segment a compliant robot´s sensorimotor stream. Our method follows a probabilistic approach, using a hidden Markov model to model the switching dynamics between the experts. The algorithm´s performance is evaluated on an unsupervised terrain classification problem using a compliant, underactuated, six-strut tensegrity robot. The results show that our model captures the influence of terrain-robot interactions on the robot´s complex dynamics and correctly segments the sensorimotor stream. We demonstrate that the activity pattern of the experts can be used to train a highly compliant robot to distinguish between different environments using only noisy internal sensors.
Keywords
compliant mechanisms; hidden Markov models; pattern classification; recurrent neural nets; robot dynamics; unsupervised learning; complex robot dynamics; compliant robot sensorimotor stream; compliant tensegrity robot; echo state network; hidden Markov model; online learning algorithm; online unsupervised terrain classification; switching dynamics; terrain-robot interactions; underactuated six-strut tensegrity robot; Hidden Markov models; Neurons; Robot sensing systems; Switches; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Robotics and Automation (ICRA), 2015 IEEE International Conference on
Conference_Location
Seattle, WA
Type
conf
DOI
10.1109/ICRA.2015.7139785
Filename
7139785
Link To Document