歌曲集元数据与声学特征值关系的可视化研究*

Midori Watanabe, Narumi Kuroko, Hayato Ohya, T. Itoh
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引用次数: 0

摘要

近年来,音乐自动分类与推荐的研究与服务十分活跃。在这里,通常不清楚什么样的元数据和声学特征对音乐分类和推荐的可行性有很大的帮助。基于这一讨论,我们正在研究具有元数据、声学特征、机器学习方法和可视化方法的音乐片段的可视化,这些方法对音乐分类任务有效,探索是否可以通过可视化发现声学特征和元数据之间的新关系。具体来说,我们使用音乐分析工具和机器学习技术计算了一组歌曲的声学特征,并将声学特征和元数据的分布可视化。在本文中,我们展示了可视化声学特征与元数据(包括发行年份、作曲家姓名和艺术家姓名)之间关系的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of the Relationship between Metadata and Acoustic Feature Values of Song Collections*
Research and services on automatic music classification and recommendation have been active in recent years. Here, it is often unclear what kind of metadata and acoustic features strongly contribute to the feasibility of music classification and recommendation. Based on this discussion, we are working on the visualization of music pieces with metadata, acoustic features, machine learning methods, and visualization methods that are effective for music classification tasks, exploring whether new relationships between acoustic features and metadata can be discovered through visualization. Specifically, we calculated the acoustic features of a set of songs using music analysis tools and machine learning techniques, and visualized the distribution of the acoustic features and metadata. In this paper, we present the experimental results visualizing the relationship between acoustic features and metadata including released year, composer name, and artist name.
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