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Automatic chord label personalization through deep learning of shared harmonic interval profiles

机译:自动和弦通过深度学习共享谐波间隔概况的自动和弦标签个性化

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摘要

Current automatic chord estimation systems are trained and tested using datasets that contain single reference annotations, i.e., for each corresponding musical segment (e.g., audio frame or section), the reference annotation contains a single chord label. Nevertheless, theoretical insights on harmonic ambiguity from harmony theory, experimental studies on annotator subjectivity in harmony annotations, and the availability of vast amounts of heterogeneous (subjective) harmony annotations in crowd-sourced repositories make the notion of a single-harmonic “ground truth” reference annotation a tenuous one. Recent studies suggest that subjectivity is intrinsic to harmonic reference annotations that should be embraced in automatic chord estimation rather than resolved. We introduce the first approach to automatic chord label personalization by modeling annotator subjectivity through harmonic interval-based chord representations. We integrate these representations from multiple annotators and deep learn them from audio. From a single trained model and the annotators’ chord-label vocabulary, we can accurately personalize chord labels for individual annotators. Furthermore, we show that chord personalization using multiple reference annotations outperforms using just a single reference annotation. Our results show that annotator subjectivity should inform future research on automatic chord estimation to improve the state of the art.
机译:使用包含单个参考注释的数据集进行培训并测试当前的自动和弦估计系统,即,对于每个对应的音乐段(例如,音频框架或部分),参考注释包含单个和弦标签。尽管如此,对和谐理论的谐波模糊性的理论见解,和谐注释的注释主观性的实验研究,以及人群储存库中大量异构(主观)和谐注释的可用性使单次谐波“真相”的概念成为一个谐波的“真相”的概念参考注释是一个脆弱的注释。最近的研究表明,主体性是谐波参考注释,应该在自动和弦估算中而不是解决。通过通过基于谐波间隔的和弦表示来介绍通过建模注释主观性来介绍自动和弦标签个性化的第一种方法。我们将这些表示从多个注释器集成并从音频深度学习它们。从一个训练有素的模型和注释器的和弦标签词汇表中,我们可以准确地个性化各个注释器的和弦标签。此外,我们显示使用多个参考注释的和弦个性化,仅使用单个参考注释才能表达。我们的研究结果表明,注释器主体性应告知未来的自动和弦估算,以改善现有技术。

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