个性化对学习场景中人机交互的影响

Nikhil Churamani, Paul Anton, M. Brügger, Erik Fließwasser, Thomas Hummel, Julius Mayer, Waleed Mustafa, Hwei Geok Ng, Thi Linh Chi Nguyen, Quan Nguyen, Marcus Soll, S. Springenberg, Sascha S. Griffiths, Stefan Heinrich, Nicolás Navarro-Guerrero, Erik Strahl, Johannes Twiefel, C. Weber, S. Wermter
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引用次数: 55

摘要

人机交互的进步涉及到机器人对与它们交互的人类用户的响应和适应能力的提高。例如,机器人模拟与人类的个性化对话,调整对话以适应用户的偏好,以便进行自然交互。本研究调查了在人机交互场景中,人类伴侣机器人的这种个性化交互能力对其社会接受度、感知智力和亲和力的影响。为了衡量这种影响,该研究利用了对象学习场景,用户使用自然语言向机器人教授不同的对象。交互模块建立在学习场景之上,在教会机器人识别不同物体之前,用户可以进行个性化对话。这两个系统,即有交互模块和没有交互模块,比较了不同用户对机器人的智能和社交能力的评价。尽管配备个性化交互功能的系统在社会接受度上的评分较低,但用户认为它更智能,更讨人喜欢。
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The Impact of Personalisation on Human-Robot Interaction in Learning Scenarios
Advancements in Human-Robot Interaction involve robots being more responsive and adaptive to the human user they are interacting with. For example, robots model a personalised dialogue with humans, adapting the conversation to accommodate the user's preferences in order to allow natural interactions. This study investigates the impact of such personalised interaction capabilities of a human companion robot on its social acceptance, perceived intelligence and likeability in a human-robot interaction scenario. In order to measure this impact, the study makes use of an object learning scenario where the user teaches different objects to the robot using natural language. An interaction module is built on top of the learning scenario which engages the user in a personalised conversation before teaching the robot to recognise different objects. The two systems, i.e. with and without the interaction module, are compared with respect to how different users rate the robot on its intelligence and sociability. Although the system equipped with personalised interaction capabilities is rated lower on social acceptance, it is perceived as more intelligent and likeable by the users.
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