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Facial Anthropomorphic Trustworthiness Scale for Social Robots: A Hybrid Approach

Yao Song, Ameersing Luximon, Yan Luximon

Year
2023
Citations
11
Access
Open access

Abstract

Social robots serve as autonomous systems for performing social behaviors and assuming social roles. However, there is a lack of research focusing on the specific measurement of facial trustworthiness toward anthropomorphic robots, particularly during initial interactions. To address this research gap, a hybrid deep convolution approach was employed in this study, involving a crowdsourcing platform for data collection and deep convolution and factor analysis for data processing. The goal was to develop a scale, called Facial Anthropomorphic Trustworthiness towards Social Robots (FATSR-17), to measure the trustworthiness of a robot's facial appearance. The final measurement scale comprised four dimensions, "ethics concern", "capability", "positive affect", and "anthropomorphism", consisting of 17 items. An iterative examination and a refinement process were conducted to ensure the scale's reliability and validity. The study contributes to the field of robot design by providing designers with a structured toolkit to create robots that appear trustworthy to users.

Keywords

RobotComputer scienceHuman–computer interactionScale (ratio)Reliability (semiconductor)TrustworthinessArtificial intelligenceField (mathematics)Data collectionCrowdsourcing

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