An Empirical Study on How People Perceive AI-generated Music

Hyeshin Chu, Joohee Kim, S. Kim, H. Lim, Hyunwoo Lee, Seungmin Jin, Jongeun Lee, Taehwan Kim, Sungahn Ko
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引用次数: 5

Abstract

Music creation is difficult because one must express one's creativity while following strict rules. The advancement of deep learning technologies has diversified the methods to automate complex processes and express creativity in music composition. However, prior research has not paid much attention to exploring the audiences' subjective satisfaction to improve music generation models. In this paper, we evaluate human satisfaction with the state-of-the-art automatic symbolic music generation models using deep learning. In doing so, we define a taxonomy for music generation models and suggest nine subjective evaluation metrics. Through an evaluation study, we obtained more than 700 evaluations from 100 participants, using the suggested metrics. Our evaluation study reveals that the token representation method and models' characteristics affect subjective satisfaction. Through our qualitative analysis, we deepen our understanding of AI-generated music and suggested evaluation metrics. Lastly, we present lessons learned and discuss future research directions of deep learning models for music creation.
关于人们如何感知人工智能音乐的实证研究
音乐创作是困难的,因为一个人必须在严格的规则下表达自己的创造力。深度学习技术的进步使复杂的过程自动化和表达音乐创作创造力的方法多样化。然而,以往的研究并没有过多地关注通过探索受众的主观满意度来完善音乐生成模型。在本文中,我们使用深度学习来评估人类对最先进的自动符号音乐生成模型的满意度。在此过程中,我们定义了音乐生成模型的分类,并提出了九个主观评价指标。通过评估研究,我们使用建议的度量标准,从100名参与者那里获得了700多个评估。我们的评估研究表明,标记表示方法和模型的特征影响主观满意度。通过我们的定性分析,我们加深了对人工智能生成的音乐和建议的评估指标的理解。最后,我们总结了经验教训,并讨论了音乐创作中深度学习模型的未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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