Song Yao, Luximon Ameersing, Luximon Yan
Digital Convergence Laboratory of Chinese Cultural Inheritance and Global Communication, Sichuan University, Chengdu 610065, China.
College of Literature and Journalism, Sichuan University, Chengdu 610065, China.
Biomimetics (Basel). 2023 Jul 29;8(4):335. doi: 10.3390/biomimetics8040335.
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.
社交机器人作为执行社交行为和承担社会角色的自主系统。然而,缺乏针对拟人化机器人面部可信度的具体测量研究,尤其是在初次互动期间。为了填补这一研究空白,本研究采用了一种混合深度卷积方法,涉及一个众包平台用于数据收集,以及深度卷积和因子分析用于数据处理。目标是开发一个名为“社交机器人面部拟人化可信度(FATSR - 17)”的量表,以测量机器人面部外观的可信度。最终的测量量表包括四个维度,即“道德关注”、“能力”、“积极情感”和“拟人化”,由17个项目组成。进行了迭代检验和完善过程以确保量表的可靠性和有效性。该研究通过为设计师提供一个结构化工具包,以创建对用户而言外观可信的机器人,从而为机器人设计领域做出了贡献。