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Autori principali: Petousakis, Giannis, Cangelosi, Angelo, Stolkin, Rustam, Chiou, Manolis
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.19580
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author Petousakis, Giannis
Cangelosi, Angelo
Stolkin, Rustam
Chiou, Manolis
author_facet Petousakis, Giannis
Cangelosi, Angelo
Stolkin, Rustam
Chiou, Manolis
contents This paper presents a novel method to quantify Trust in HRI. It proposes an HRI framework for estimating the Robot Trust towards the Human in the context of a narrow and specified task. The framework produces a real-time estimation of an AI agent's Artificial Trust towards a Human partner interacting with a mobile teleoperation robot. The approach for the framework is based on principles drawn from Theory of Mind, including information about the human state, action, and intent. The framework creates the ATTUNE model for Artificial Trust Towards Human Operators. The model uses metrics on the operator's state of attention, navigational intent, actions, and performance to quantify the Trust towards them. The model is tested on a pre-existing dataset that includes recordings (ROSbags) of a human trial in a simulated disaster response scenario. The performance of ATTUNE is evaluated through a qualitative and quantitative analysis. The results of the analyses provide insight into the next stages of the research and help refine the proposed approach.
format Preprint
id arxiv_https___arxiv_org_abs_2411_19580
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The ATTUNE model for Artificial Trust Towards Human Operators
Petousakis, Giannis
Cangelosi, Angelo
Stolkin, Rustam
Chiou, Manolis
Robotics
This paper presents a novel method to quantify Trust in HRI. It proposes an HRI framework for estimating the Robot Trust towards the Human in the context of a narrow and specified task. The framework produces a real-time estimation of an AI agent's Artificial Trust towards a Human partner interacting with a mobile teleoperation robot. The approach for the framework is based on principles drawn from Theory of Mind, including information about the human state, action, and intent. The framework creates the ATTUNE model for Artificial Trust Towards Human Operators. The model uses metrics on the operator's state of attention, navigational intent, actions, and performance to quantify the Trust towards them. The model is tested on a pre-existing dataset that includes recordings (ROSbags) of a human trial in a simulated disaster response scenario. The performance of ATTUNE is evaluated through a qualitative and quantitative analysis. The results of the analyses provide insight into the next stages of the research and help refine the proposed approach.
title The ATTUNE model for Artificial Trust Towards Human Operators
topic Robotics
url https://arxiv.org/abs/2411.19580