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Auteurs principaux: Lombardi, Maria, Maiettini, Elisa, Tikhanoff, Vadim, Natale, Lorenzo
Format: Preprint
Publié: 2022
Sujets:
Accès en ligne:https://arxiv.org/abs/2207.13552
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author Lombardi, Maria
Maiettini, Elisa
Tikhanoff, Vadim
Natale, Lorenzo
author_facet Lombardi, Maria
Maiettini, Elisa
Tikhanoff, Vadim
Natale, Lorenzo
contents Performing joint interaction requires constant mutual monitoring of own actions and their effects on the other's behaviour. Such an action-effect monitoring is boosted by social cues and might result in an increasing sense of agency. Joint actions and joint attention are strictly correlated and both of them contribute to the formation of a precise temporal coordination. In human-robot interaction, the robot's ability to establish joint attention with a human partner and exploit various social cues to react accordingly is a crucial step in creating communicative robots. Along the social component, an effective human-robot interaction can be seen as a new method to improve and make the robot's learning process more natural and robust for a given task. In this work we use different social skills, such as mutual gaze, gaze following, speech and human face recognition, to develop an effective teacher-learner scenario tailored to visual object learning in dynamic environments. Experiments on the iCub robot demonstrate that the system allows the robot to learn new objects through a natural interaction with a human teacher in presence of distractors.
format Preprint
id arxiv_https___arxiv_org_abs_2207_13552
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle iCub Knows Where You Look: Exploiting Social Cues for Interactive Object Detection Learning
Lombardi, Maria
Maiettini, Elisa
Tikhanoff, Vadim
Natale, Lorenzo
Robotics
Performing joint interaction requires constant mutual monitoring of own actions and their effects on the other's behaviour. Such an action-effect monitoring is boosted by social cues and might result in an increasing sense of agency. Joint actions and joint attention are strictly correlated and both of them contribute to the formation of a precise temporal coordination. In human-robot interaction, the robot's ability to establish joint attention with a human partner and exploit various social cues to react accordingly is a crucial step in creating communicative robots. Along the social component, an effective human-robot interaction can be seen as a new method to improve and make the robot's learning process more natural and robust for a given task. In this work we use different social skills, such as mutual gaze, gaze following, speech and human face recognition, to develop an effective teacher-learner scenario tailored to visual object learning in dynamic environments. Experiments on the iCub robot demonstrate that the system allows the robot to learn new objects through a natural interaction with a human teacher in presence of distractors.
title iCub Knows Where You Look: Exploiting Social Cues for Interactive Object Detection Learning
topic Robotics
url https://arxiv.org/abs/2207.13552