Naturalistic Paired Participant Social Touch Dataset with Pressure Sensing

Citation Author(s):
Millie
Salvato
Sophia
Williams
Cara
Nunez
Xin
Zhu
Ali
Israr
Frances
Lau
Keith
Klumb
Freddy
Abnousi
Allison
Okamura
Heather
Culbertson
Submitted by:
Millie Salvato
Last updated:
Tue, 05/17/2022 - 22:18
DOI:
10.21227/pqvs-8918
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Abstract 

During social interactions, people use auditory, visual, and haptic cues to convey their thoughts, emotions, and intentions. Due to weight, energy, and other hardware constraints, it is difficult to create devices that completely capture the complexity of human touch. Here we explore whether a sparse representation of human touch is sufficient to convey social touch signals. To test this we collected a dataset of social touch interactions using a soft wearable pressure sensor array, developed an algorithm to map recorded data to an array of actuators, then applied our algorithm to create signals that drive an array of normal indentation actuators placed on the arm. Using this wearable, low-resolution, low-force device, we find that users are able to distinguish the intended social meaning, and compare performance to results based on direct human touch. As online communication becomes more prevalent, such systems to convey haptic signals could allow for improved distant socializing and empathetic remote human-human interaction.

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