J-POP独唱歌手演唱技巧的分析与检测

Yuya Yamamoto, Juhan Nam, Hiroko Terasawa
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引用次数: 2

摘要

本文主要对音乐信息检索范围内的歌唱技巧进行研究。我们调查歌手如何使用演唱技巧,使用日本流行音乐歌曲(J-POP)中著名独唱歌手的真实录音。首先,我们建立了一个歌唱技巧的新数据集。该数据集由168首商业J-POP歌曲组成,每首歌曲都使用不同的演唱技巧进行注释,并带有时间戳和音高轮廓。我们还在数据集上提供歌唱技巧的描述性统计,以澄清歌唱技巧出现的内容和频率。我们进一步探索了使用先前提出的机器学习技术自动检测唱歌技术的难度。在检测中,我们还研究了辅助信息(即标签持续时间的间距和分布)的有效性,而不仅仅是提供基线。在九路多类检测的宏观平均f测度上,最佳结果达到40.4%。我们在附录网站0上提供了数据集的注释和详细信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Detection of Singing Techniques in Repertoires of J-POP Solo Singers
In this paper, we focus on singing techniques within the scope of music information retrieval research. We investigate how singers use singing techniques using real-world recordings of famous solo singers in Japanese popular music songs (J-POP). First, we built a new dataset of singing techniques. The dataset consists of 168 commercial J-POP songs, and each song is annotated using various singing techniques with timestamps and vocal pitch contours. We also present descriptive statistics of singing techniques on the dataset to clarify what and how often singing techniques appear. We further explored the difficulty of the automatic detection of singing techniques using previously proposed machine learning techniques. In the detection, we also investigate the effectiveness of auxiliary information (i.e., pitch and distribution of label duration), not only providing the baseline. The best result achieves 40.4% at macro-average F-measure on nine-way multi-class detection. We provide the annotation of the dataset and its detail on the appendix website 0 .
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