Suppr超能文献

人类主导一切:类人合成语音被认为不那么怪异且更讨人喜欢。来自一项主观评分研究的证据。

The Human Takes It All: Humanlike Synthesized Voices Are Perceived as Less Eerie and More Likable. Evidence From a Subjective Ratings Study.

作者信息

Kühne Katharina, Fischer Martin H, Zhou Yuefang

机构信息

Division of Cognitive Sciences, University of Potsdam, Potsdam, Germany.

出版信息

Front Neurorobot. 2020 Dec 16;14:593732. doi: 10.3389/fnbot.2020.593732. eCollection 2020.

Abstract

The increasing involvement of social robots in human lives raises the question as to how humans perceive social robots. Little is known about human perception of synthesized voices. To investigate which synthesized voice parameters predict the speaker's eeriness and voice likability; to determine if individual listener characteristics (e.g., personality, attitude toward robots, age) influence synthesized voice evaluations; and to explore which paralinguistic features subjectively distinguish humans from robots/artificial agents. 95 adults (62 females) listened to randomly presented audio-clips of three categories: synthesized (, IBM), humanoid (robot , Hanson Robotics), and human voices (five clips/category). Voices were rated on intelligibility, prosody, trustworthiness, confidence, enthusiasm, pleasantness, human-likeness, likability, and naturalness. Speakers were rated on appeal, credibility, human-likeness, and eeriness. Participants' personality traits, attitudes to robots, and demographics were obtained. The human voice and human speaker characteristics received reliably higher scores on all dimensions except for eeriness. Synthesized voice ratings were positively related to participants' agreeableness and neuroticism. Females rated synthesized voices more positively on most dimensions. Surprisingly, interest in social robots and attitudes toward robots played almost no role in voice evaluation. Contrary to the expectations of an uncanny valley, when the ratings of human-likeness for both the voice and the speaker characteristics were higher, they seemed less eerie to the participants. Moreover, when the speaker's voice was more humanlike, it was more liked by the participants. This latter point was only applicable to one of the synthesized voices. Finally, pleasantness and trustworthiness of the synthesized voice predicted the likability of the speaker's voice. Qualitative content analysis identified intonation, sound, emotion, and imageability/embodiment as diagnostic features. Humans clearly prefer human voices, but manipulating diagnostic speech features might increase acceptance of synthesized voices and thereby support human-robot interaction. There is limited evidence that human-likeness of a voice is negatively linked to the perceived eeriness of the speaker.

摘要

社交机器人越来越多地融入人类生活,这引发了一个问题:人类如何看待社交机器人。人们对人类对合成语音的感知了解甚少。为了研究哪些合成语音参数能预测说话者的怪异程度和语音受欢迎程度;确定个体听众特征(如个性、对机器人的态度、年龄)是否会影响合成语音评价;并探索哪些副语言特征能主观地区分人类与机器人/人工智能。95名成年人(62名女性)收听了随机呈现的三类音频片段:合成语音(如IBM)、类人语音(机器人,汉森机器人公司)和人类语音(每类五个片段)。对语音的可懂度、韵律、可信度、自信度、热情度、愉悦度、类人性、受欢迎程度和自然度进行评分。对说话者的吸引力、可信度、类人性和怪异程度进行评分。获取了参与者的个性特征、对机器人的态度和人口统计学信息。除怪异程度外,人类语音和人类说话者特征在所有维度上的得分均显著更高。合成语音评分与参与者的宜人性和神经质呈正相关。女性在大多数维度上对合成语音的评价更积极。令人惊讶的是,对社交机器人的兴趣和对机器人的态度在语音评价中几乎没有作用。与恐怖谷理论的预期相反,当语音和说话者特征的类人性评分较高时,参与者觉得它们的怪异程度似乎较低。此外,当说话者的语音更具类人性时,参与者更喜欢。后一点仅适用于其中一种合成语音。最后,合成语音的愉悦度和可信度预测了说话者语音的受欢迎程度。定性内容分析确定语调、声音、情感和可想象性/体现为诊断特征。人类显然更喜欢人类语音,但操纵诊断性语音特征可能会提高对合成语音的接受度,从而支持人机交互。有有限的证据表明,语音的类人性与说话者的怪异程度呈负相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec0d/7772241/e52c277edb72/fnbot-14-593732-g0001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验