通过音乐驱动的机器人情感、韵律和手势建立人与机器人的信任

Richard J. Savery, R. Rose, Gil Weinberg
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引用次数: 27

摘要

随着人机协作机会的不断扩大,信任对机器人的充分参与和利用变得越来越重要。建立在情感关系和人际关系上的情感信任尤其重要,因为它更能抵御错误,并增加合作的意愿。在本文中,我们提出了一个基于音乐驱动的情感韵律和手势的新模型,该模型鼓励对机器人身份的感知,旨在避免恐怖谷。象征性的音乐短语是由人类音乐家生成并标记情感信息的。这些短语控制了一个合成引擎播放通过插值音素和电子乐器生成的预渲染音频样本。手势也受到符号短语的驱动,将情感从音乐短语编码为低自由度动作。通过一项用户研究,我们发现我们的系统能够准确地向用户描绘一系列情绪。我们还展示了一个重要的结果,即我们的非语言音频生成比使用最先进的文本到语音系统的平均信任度高出8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Establishing Human-Robot Trust through Music-Driven Robotic Emotion Prosody and Gesture
As human-robot collaboration opportunities continue to expand, trust becomes ever more important for full engagement and utilization of robots. Affective trust, built on emotional relationship and interpersonal bonds is particularly critical as it is more resilient to mistakes and increases the willingness to collaborate. In this paper we present a novel model built on music-driven emotional prosody and gestures that encourages the perception of a robotic identity, designed to avoid uncanny valley. Symbolic musical phrases were generated and tagged with emotional information by human musicians. These phrases controlled a synthesis engine playing back pre-rendered audio samples generated through interpolation of phonemes and electronic instruments. Gestures were also driven by the symbolic phrases, encoding the emotion from the musical phrase to low degree-of-freedom movements. Through a user study we showed that our system was able to accurately portray a range of emotions to the user. We also showed with a significant result that our non-linguistic audio generation achieved an 8% higher mean of average trust than using a state-of-the-art text-to-speech system.
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