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感知(而非听觉)特征可预测歌唱声音偏好。

Perceptual (but not acoustic) features predict singing voice preferences.

机构信息

Max Planck Institute for Empirical Aesthetics, Frankfurt am Main, Germany.

New York University, New York, NY, USA.

出版信息

Sci Rep. 2024 Apr 18;14(1):8977. doi: 10.1038/s41598-024-58924-9.

Abstract

Why do we prefer some singers to others? We investigated how much singing voice preferences can be traced back to objective features of the stimuli. To do so, we asked participants to rate short excerpts of singing performances in terms of how much they liked them as well as in terms of 10 perceptual attributes (e.g.: pitch accuracy, tempo, breathiness). We modeled liking ratings based on these perceptual ratings, as well as based on acoustic features and low-level features derived from Music Information Retrieval (MIR). Mean liking ratings for each stimulus were highly correlated between Experiments 1 (online, US-based participants) and 2 (in the lab, German participants), suggesting a role for attributes of the stimuli in grounding average preferences. We show that acoustic and MIR features barely explain any variance in liking ratings; in contrast, perceptual features of the voices achieved around 43% of prediction. Inter-rater agreement in liking and perceptual ratings was low, indicating substantial (and unsurprising) individual differences in participants' preferences and perception of the stimuli. Our results indicate that singing voice preferences are not grounded in acoustic attributes of the voices per se, but in how these features are perceptually interpreted by listeners.

摘要

我们为什么会偏爱某些歌手而不是其他歌手?我们研究了歌唱声音偏好在多大程度上可以追溯到刺激的客观特征。为此,我们要求参与者根据他们喜欢的程度以及 10 个感知属性(例如:音准、节奏、气息声)对短片段的歌唱表演进行评分。我们基于这些感知评分以及基于音乐信息检索(MIR)得出的声学特征和低级特征来对喜好评分进行建模。实验 1(在线,美国参与者)和实验 2(在实验室,德国参与者)中,每个刺激的平均喜好评分之间高度相关,这表明刺激的属性在基础平均偏好方面发挥了作用。我们表明,声学和 MIR 特征几乎无法解释喜好评分中的任何差异;相比之下,声音的感知特征达到了约 43%的预测。喜好和感知评分的评分者间一致性较低,表明参与者的偏好和对刺激的感知存在很大(并不奇怪)的个体差异。我们的结果表明,歌唱声音偏好不是基于声音的声学属性本身,而是基于听众对这些特征的感知解释。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/85e4/11026466/dcf260bbe899/41598_2024_58924_Fig1_HTML.jpg

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