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Self-Supervised Online Learning of Basic Object Push Affordances
Author(s) -
Barry Ridge,
Aleš Leonardis,
Aleš Ude,
Miha Deniša,
Danijel Skočaj
Publication year - 2015
Publication title -
international journal of advanced robotic systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.394
H-Index - 46
eISSN - 1729-8814
pISSN - 1729-8806
DOI - 10.5772/59654
Subject(s) - affordance , computer science , discriminative model , artificial intelligence , robot , object (grammar) , learning vector quantization , machine learning , learning object , supervised learning , human–computer interaction , robot learning , vector quantization , mobile robot , artificial neural network
Continuous learning of object affordances in a cognitive robot is a challenging problem, the solution to which arguably requires a developmental approach. In this paper, we describe scenarios where robotic systems interact with household objects by pushing them using robot arms while observing the scene with cameras, and which must incrementally learn, without external supervision, both the effect classes that emerge from these interactions as well as a discriminative model for predicting them from object properties. We formalize the scenario as a multi-view learning problem where data co-occur over two separate data views over time, and we present an online learning framework that uses a self-supervised form of learning vector quantization to build the discriminative model. In various experiments, we demonstrate the effectiveness of this approach in comparison with related supervised methods using data from experiments performed using two different robotic platforms

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