文艺复兴时期古典音乐与其他时期古典音乐自动分类问题中参数化方法的选择

M. Walczynski, Patryk Grzybała
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引用次数: 2

摘要

在本文中,我们介绍了我们在古典音乐作品自动分类领域的工作成果。研究的作品是四个时期的古典音乐作品:文艺复兴时期、巴洛克时期、古典主义时期和浪漫主义时期。在工作中,我们描述了音乐文件参数化的选择方法,使他们强调文艺复兴的特点。我们使用的参数是水平性质的,即它们不会穿透作品的垂直结构(例如和弦的进展)。我们使用了571首古典音乐作品,包括世俗音乐和宗教音乐。这些文件以MusicXML格式存储,分别包含了187首文艺复兴时期的作品、146首巴洛克时期的作品、119首经典作品和119首浪漫主义时期的作品。研究结果分别用4、13和113个参数表示。采用人工神经网络和支持向量机对歌曲所属时代进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selected methods of parametrization in problem of automatic classification classical music from the Renaissance era against the classical works from other eras
In this article we present the results of our work in the field of automatic classification of classical music pieces. The studied works were compositions of classical music composed in four eras: Renaissance, Baroque, Classicism and Romanticism. In the work we described selected methods of parameterization of music files, so that they emphasize the characteristic of Renaissance. The parameters we use are of a horizontal nature, i.e. they do not penetrate the vertical structure of the piece (e.g. chords progression). We used a base of 571 works of classical music, both secular and religious. The files were stored in MusicXML format and contained 187 Renaissance pieces, 146 Baroque, 119 classics and 119 stylistically belonging to the Romantic era, respectively. The results of the studies were presented using 4, 13 and 113 parameters. An artificial neural network and Support Vector Machine were used to classify the era to which the song belongs.
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