Continual Learning for Affective Robotics: A Proof of Concept for Wellbeing

Sustaining real-world human-robot interactions re-quires robots to be sensitive to human behavioural idiosyn-crasies and adapt their perception and behaviour models to cater to these individual preferences. For affective robots, this entails learning to adapt to individual affective behaviour to off...

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Published in2022 10th International Conference on Affective Computing and Intelligent Interaction Workshops and Demos (ACIIW) pp. 1 - 8
Main Authors Churamani, Nikhil, Axelsson, Minja, Caldir, Atahan, Gunes, Hatice
Format Conference Proceeding
LanguageEnglish
Published IEEE 18.10.2022
Subjects
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DOI10.1109/ACIIW57231.2022.10086005

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Abstract Sustaining real-world human-robot interactions re-quires robots to be sensitive to human behavioural idiosyn-crasies and adapt their perception and behaviour models to cater to these individual preferences. For affective robots, this entails learning to adapt to individual affective behaviour to offer a personalised interaction experience to each individual. Continual Learning (CL) has been shown to enable real-time adaptation in agents, allowing them to learn with incrementally acquired data while preserving past knowledge. In this work, we present a novel framework for real-world application of CL for modelling personalised human-robot interactions using a CL-based affect perception mechanism. To evaluate the proposed framework, we undertake a proof-of-concept user study with 20 participants interacting with the Pepper robot using three variants of interaction behaviour: static and scripted, using affect-based adaptation without personalisation, and using affect-based adaptation with continual personalisation. Our results demonstrate a clear preference in the participants for CL-based continual personalisation with significant improvements observed in the robot's anthropomorphism, animacy and likeability ratings as well as the interactions being rated significantly higher for warmth and comfort as the robot is rated as significantly better at understanding how the participants feel.
AbstractList Sustaining real-world human-robot interactions re-quires robots to be sensitive to human behavioural idiosyn-crasies and adapt their perception and behaviour models to cater to these individual preferences. For affective robots, this entails learning to adapt to individual affective behaviour to offer a personalised interaction experience to each individual. Continual Learning (CL) has been shown to enable real-time adaptation in agents, allowing them to learn with incrementally acquired data while preserving past knowledge. In this work, we present a novel framework for real-world application of CL for modelling personalised human-robot interactions using a CL-based affect perception mechanism. To evaluate the proposed framework, we undertake a proof-of-concept user study with 20 participants interacting with the Pepper robot using three variants of interaction behaviour: static and scripted, using affect-based adaptation without personalisation, and using affect-based adaptation with continual personalisation. Our results demonstrate a clear preference in the participants for CL-based continual personalisation with significant improvements observed in the robot's anthropomorphism, animacy and likeability ratings as well as the interactions being rated significantly higher for warmth and comfort as the robot is rated as significantly better at understanding how the participants feel.
Author Caldir, Atahan
Gunes, Hatice
Axelsson, Minja
Churamani, Nikhil
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  givenname: Atahan
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  givenname: Hatice
  surname: Gunes
  fullname: Gunes, Hatice
  email: hatice.gunes@cl.cam.ac.uk
  organization: University of Cambridge,Department of Computer Science and Technology,United Kingdom
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Snippet Sustaining real-world human-robot interactions re-quires robots to be sensitive to human behavioural idiosyn-crasies and adapt their perception and behaviour...
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SubjectTerms Adaptation models
Affective computing
Affective Robotics
Anthropomorphism
Conferences
Continual Learning
Facial Affect
Human-robot interaction
Real-time systems
Robot sensing systems
Wellbeing
Title Continual Learning for Affective Robotics: A Proof of Concept for Wellbeing
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