Learning secondary tool affordances of human partners using iCub robot's egocentric data
Bosong Ding, Erhan Oztop, Giacomo Spigler, Murat Kirtay

TL;DR
This paper explores how the iCub robot can learn secondary tool affordances from egocentric visual data, enabling it to understand and predict human tool use beyond primary functions for improved collaboration.
Contribution
The study introduces a neural network-based approach for robots to learn secondary affordances from egocentric data, addressing a less explored aspect of tool use in human-robot interaction.
Findings
Deep learning models can predict secondary tool affordances from images.
The approach enables understanding of auxiliary tool uses in collaborative tasks.
Neural networks successfully predict tools and actions from visual data.
Abstract
Objects, in particular tools, provide several action possibilities to the agents that can act on them, which are generally associated with the term of affordances. A tool is typically designed for a specific purpose, such as driving a nail in the case of a hammer, which we call as the primary affordance. A tool can also be used beyond its primary purpose, in which case we can associate this auxiliary use with the term secondary affordance. Previous work on affordance perception and learning has been mostly focused on primary affordances. Here, we address the less explored problem of learning the secondary tool affordances of human partners. To do this, we use the iCub robot to observe human partners with three cameras while they perform actions on twenty objects using four different tools. In our experiments, human partners utilize tools to perform actions that do not correspond to…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Social Robot Interaction and HRI
