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Learning contextual affordances with an associative neural architecture

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Version 2 2024-06-13, 05:38
Version 1 2019-06-06, 14:16
conference contribution
posted on 2024-06-13, 05:38 authored by Francisco Cruz Naranjo, GI Parisi, S Wermter
Affordances are an effective method to anticipate the effect of actions performed by an agent interacting with objects. In this work, we present a robotic cleaning task using contextual affordances, i.e. an extension of affordances which takes into account the current state. We implement an associative neural architecture for predicting the effect of performed actions with different objects to avoid failed states. Experimental results on a simulated robot environment show that our associative memory is able to learn in short time and predict future states with high accuracy.

History

Pagination

665-670

Location

Bruges, Belgium

Open access

  • Yes

Start date

2016-04-27

End date

2016-04-29

ISBN-13

978-2-87587-026-1

Language

eng

Notes

978-2-87587-026-1

Publication classification

E2.1 Full written paper - non-refereed / Abstract reviewed

Title of proceedings

ESANN 2016 : Proceedings of the 24th European Symposium on Artificial Neural Network. Computational Intelligence and Machine Learning.

Event

Artificial Neural Networks. Computational Intelligence and Machine. European Symposium (24th : 2016 : Bruges, Belgium)

Publisher

UCLouvain

Place of publication

Ottignies-Louvain-la-Neuve, Belgium

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