Intrinsic motivation and episodic memories for robot exploration of high-dimensional sensory spaces

This work presents an architecture that generates curiosity-driven goal-directed exploration behaviours for an image sensor of a microfarming robot. A combination of deep neural networks for offline unsupervised learning of low-dimensional features from images and of online learning of shallow neura...

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Bibliographic Details
Published inAdaptive behavior Vol. 29; no. 6; pp. 549 - 566
Main Authors Schillaci, Guido, Pico Villalpando, Antonio, Hafner, Verena V, Hanappe, Peter, Colliaux, David, Wintz, Timothée
Format Journal Article
LanguageEnglish
Published London, England SAGE Publications 01.12.2021
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Summary:This work presents an architecture that generates curiosity-driven goal-directed exploration behaviours for an image sensor of a microfarming robot. A combination of deep neural networks for offline unsupervised learning of low-dimensional features from images and of online learning of shallow neural networks representing the inverse and forward kinematics of the system have been used. The artificial curiosity system assigns interest values to a set of pre-defined goals and drives the exploration towards those that are expected to maximise the learning progress. We propose the integration of an episodic memory in intrinsic motivation systems to face catastrophic forgetting issues, typically experienced when performing online updates of artificial neural networks. Our results show that adopting an episodic memory system not only prevents the computational models from quickly forgetting knowledge that has been previously acquired but also provides new avenues for modulating the balance between plasticity and stability of the models.
ISSN:1059-7123
1741-2633
DOI:10.1177/1059712320922916