HRI-SENSE: a multimodal dataset on social and emotional responses to robot behaviour
HRI-SENSE: a multimodal dataset on social and emotional responses to robot behaviour
We introduce HRI-SENSE, a multimodal dataset of Human-Robot Interactions (HRI) studying users' social, physical (e.g. facial expressions, body movements) and emotional, psychological (e.g. frustration, satisfaction) responses to robot behaviour. The dataset captures participants collaborating with a TIAGo humanoid robot following various behaviour models on a manipulation-based "Burger Assembly" task, eliciting different user reactions. HRI-SENSE contains over 6 hours of verbal and physical interactions taking place over 146 sessions with 18 participants, recording multiple modalities captured simultaneously by RGB and Depth cameras from three angles and one microphone. The time-synchronized multimodal data include non-verbal behaviours (e.g. facial landmarks, expressions, pose landmarks), explicit feedback signals (e.g. verbal interactions), robot movements and self-assessed questionnaires on sociodemographics and user impressions (e.g. frustration, satisfaction) on robot interactions. HRI-SENSE is expected to facilitate further research into modelling non-verbal behaviour and advancing the development of user-aware interaction models in HRI domain.
Gucsi, Balint
f12f8c58-4ae7-4a39-a7d7-2cdf40184fd9
Nguyen, Tan Viet Tuyen
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Chu, Bing
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Tarapore, Danesh
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Tran-Thanh, Long
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4 March 2025
Gucsi, Balint
f12f8c58-4ae7-4a39-a7d7-2cdf40184fd9
Nguyen, Tan Viet Tuyen
f6e9374c-5174-4446-b4f0-5e6359efc105
Chu, Bing
555a86a5-0198-4242-8525-3492349d4f0f
Tarapore, Danesh
fe8ec8ae-1fad-4726-abef-84b538542ee4
Tran-Thanh, Long
aecacf50-460e-410a-83be-b0c2a5ae226e
Gucsi, Balint, Nguyen, Tan Viet Tuyen, Chu, Bing, Tarapore, Danesh and Tran-Thanh, Long
(2025)
HRI-SENSE: a multimodal dataset on social and emotional responses to robot behaviour.
20th Annual ACM/IEEE International Conference on Human-Robot Interaction, HRI 2025: Robots for a Sustainable World, , Melbourne, Australia.
04 - 06 Mar 2025.
5 pp
.
(doi:10.5555/3721488.3721671).
Record type:
Conference or Workshop Item
(Paper)
Abstract
We introduce HRI-SENSE, a multimodal dataset of Human-Robot Interactions (HRI) studying users' social, physical (e.g. facial expressions, body movements) and emotional, psychological (e.g. frustration, satisfaction) responses to robot behaviour. The dataset captures participants collaborating with a TIAGo humanoid robot following various behaviour models on a manipulation-based "Burger Assembly" task, eliciting different user reactions. HRI-SENSE contains over 6 hours of verbal and physical interactions taking place over 146 sessions with 18 participants, recording multiple modalities captured simultaneously by RGB and Depth cameras from three angles and one microphone. The time-synchronized multimodal data include non-verbal behaviours (e.g. facial landmarks, expressions, pose landmarks), explicit feedback signals (e.g. verbal interactions), robot movements and self-assessed questionnaires on sociodemographics and user impressions (e.g. frustration, satisfaction) on robot interactions. HRI-SENSE is expected to facilitate further research into modelling non-verbal behaviour and advancing the development of user-aware interaction models in HRI domain.
Text
HRI2025
- Accepted Manuscript
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Published date: 4 March 2025
Venue - Dates:
20th Annual ACM/IEEE International Conference on Human-Robot Interaction, HRI 2025: Robots for a Sustainable World, , Melbourne, Australia, 2025-03-04 - 2025-03-06
Identifiers
Local EPrints ID: 499831
URI: http://eprints.soton.ac.uk/id/eprint/499831
PURE UUID: 08c72ac0-bb19-44da-865b-9fe385a27201
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Date deposited: 07 Apr 2025 16:38
Last modified: 08 Apr 2025 02:09
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Contributors
Author:
Balint Gucsi
Author:
Tan Viet Tuyen Nguyen
Author:
Bing Chu
Author:
Danesh Tarapore
Author:
Long Tran-Thanh
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