基于旋律模式提取和聚类的音乐文档类型分类

Bor-Shen Lin, Tai-Cheng Chen
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引用次数: 2

摘要

音乐文档的类型分类通常基于关键词、统计特征或低级声学特征。这些特征要么是缺乏对音乐内容的深入了解,要么是音乐专业人士无法理解的。本文提出了一种基于相关性分析的音乐文档旋律模式分类方案。对提取的模式进行进一步聚类,利用统计模式的平滑技术有效地提高了聚类性能。对爵士、抒情、摇滚、古典等5种音乐类型进行分类,准确率达到70.67%,明显优于基于统计特征的人工神经网络分类器。这些模式可以转化为符号形式,使分类结果对大多数音乐工作者来说是有意义的和可理解的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genre Classification for Musical Documents Based on Extracted Melodic Patterns and Clustering
Genre classification for musical documents is conventionally based on keywords, statistical features or low-level acoustic features. Such features are either lack of in-depth information of music content or incomprehensible for music professionals. This paper proposed a classification scheme based on the correlation analysis of the melodic patterns extracted from music documents. The extracted patterns can be further clustered, and smoothing techniques for the statistics of the patterns can be utilized to improve the performance effectively. The accuracy of 70.67% for classifying five types of genre, including jazz, lyric, rock, classical and others, can be achieved, which outperforms an ANN-based classifier using statistical features significantly. The patterns can be converted into symbolic forms such that the classification results are meaningful and comprehensible for most music workers.
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