社交机器人的身体形象

Bing-chuan Li, Oumayma Ajjaji, Robin Gigandet, Tatjana Nazir
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引用次数: 0

摘要

社交机器人的快速发展给机器人科学和认知科学都带来了挑战,即理解人类如何感知机器人的外观。这种理解是实现成功的人机共生的关键先决条件。为了揭示人们对机器人的看法和态度,我们分析了过去几十年开发的30个机器人中人类自发产生的与图像相关的单词。这些词描绘了每个机器人的身体形象。然后,我们使用单词情感量表和嵌入向量来为人类感知和身体图像之间的联系提供证据。我们的研究结果表明,身体图像的效价和优势反映了人类对机器人的一般概念的态度。研究进一步表明,机器人的用户基础和使用显著影响人们对单个机器人的印象。此外,我们通过检测机器人和人类相关词语之间的语义距离,以及性别和年龄区分的词语,研究了身体图像的心理和文化含义。这一分析揭示了与“人”这个词的语义距离和机器人的影响之间的关系,以及对机器人的性别和年龄的刻板印象。我们的研究表明,使用文字来构建机器人的身体图像是一种有效的方法,可以了解人们喜欢哪些特征,以及是什么影响了他们对机器人的感觉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The body images of social robots
The rapid development of social robots has sparked a challenge for both robotics and cognitive sciences to comprehend how humans perceive the appearance of robots. This understanding is a crucial prerequisite for achieving successful human-robot symbiosis. To uncover people's perceptions and attitudes towards robots, we analyzed image-associated words generated spontaneously by humans for 30 robots developed in the past decades. These words delineated a body image for each of the robots. We then used word affective scales and embedding vectors to provide evidence for links between human perception and the body images. Our findings revealed that the valence and dominance of the body images reflected human attitudes toward the general concept of robots. The study further demonstrated that the user-base and usage of robots significantly influenced people's impressions of individual robots. Moreover, we investigated the psychological and cultural implications of the body images by examining semantic distances between the robots and a human-related word, as well as gender- and age-distinguished words. This analysis revealed a relationship between the semantic distances to the word “person” and the robots' affects, as well as gender and age stereotypes towards the robots. Our study demonstrated that using words to build body images for robots is an effective approach to understanding which features are appreciated by people and what influences their feelings towards robots.
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