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Title:

Learning Causal Relationships of Object Properties and Affordances Through Human Demonstrations and Self-Supervised Intervention for Purposeful Action in Transfer Environments

Document type:
Magazinartikel
Author(s):
Constantin Uhde; Nicolas Berberich; Hao Ma; Rogelio Guadarrama; Gordon Cheng
Abstract:
Learning object affordances enables robots to plan and perform purposeful actions. However, a fundamental challenge for the utilization of affordance knowledge lies in its generalization to unknown objects and environments. In this letter we present a new method for learning causal relationships between object properties and object affordances which can be transferred to other environments. Our approach, implemented on a PR2 robot, generates hypotheses of property-affordance models in a toy envi...     »
Journal title:
IEEE Robotics and Automation Letters
Year:
2022
Journal volume:
Volume 7
Year / month:
2022-10
Journal issue:
Issue 4
Pages contribution:
11015 - 11022
Reviewed:
ja
Language:
en
Fulltext / DOI:
doi:10.1109/LRA.2022.3196125
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