超越单调:通过情感交流增强人机互动

Kim Klüber , Linda Onnasch
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引用次数: 0

摘要

随着机器人越来越多地成为人类环境的一部分,它们表达同理心和情感表达的能力对于有效的互动至关重要。虽然非语言提示,如面部表情和肢体语言,已经被广泛研究,但语言交流的作用,尤其是情感语言,受到的关注较少,尽管在许多人机交互场景中是必不可少的。这项研究通过对157名参与者的实验室实验来解决这一差距,研究机器人的情感语言如何影响人类的感知和行为。为了探索不同语调和内容的影响,我们在三种情况下操纵机器人的语音:单调中性、单调情感和表达情感。主要测量包括经验和代理的归因(遵循心理理论),感知的可信度(认知和情感水平)和宽恕。此外,采用气球模拟风险任务(BART)客观评估依赖行为,采用带有机器人故意错误的教学任务衡量行为宽恕。我们的研究结果表明,情感表达语言增强了机器人感知经验的能力(即感受情绪的能力),并增加了情感可信度。结果进一步表明,言语的情感内容,而不是语调,是决定性因素。因此,在未来的机器人应用中,机器人交流的情感内容可能比情感语气发挥更关键的作用。然而,我们没有发现在不同层次的情感交流中依赖行为或宽恕有显著差异。这表明,虽然情感语言可以影响机器人的情感感知,但它不一定会改变行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond the monotonic: Enhancing human-robot interaction through affective communication
As robots increasingly become part of human environments, their ability to convey empathy and emotional expression is critical for effective interaction. While non-verbal cues, such as facial expressions and body language, have been widely researched, the role of verbal communication - especially affective speech - has received less attention, despite being essential in many human-robot interaction scenarios. This study addresses this gap through a laboratory experiment with 157 participants, investigating how a robot's affective speech influences human perceptions and behavior. To explore the effects of varying intonation and content, we manipulated the robot's speech across three conditions: monotonic-neutral, monotonic-emotional, and expressive-emotional. Key measures included attributions of experience and agency (following the Theory of Mind), perceived trustworthiness (cognitive and affective level), and forgiveness. Additionally, the Balloon Analogue Risk Task (BART) was employed to assess dependence behavior objectively, and a teaching task with intentional robot errors was used to measure behavioral forgiveness. Our findings reveal that emotionally expressive speech enhances the robot's perceived capacity for experience (i.e., the ability to feel emotions) and increases affective trustworthiness. The results further suggest that affective content of speech, rather than intonation, is the decisive factor. Consequently, in future robotic applications, the affective content of a robot's communication may play a more critical role than the emotional tone. However, we did not find significant differences in dependence behavior or forgiveness across the varying levels of affective communication. This suggests that while affective speech can influence emotional perceptions of the robot, it does not necessarily alter behavior.
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