Music Classification Using Fourier Transform and Support Vector Machines

Davis Moswedi, Ritesh Ajoodha
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Abstract

Information retrieval from music is an active research area in computer science. In this paper, we perform a music classification by genre using the subset of the characteristics of the music signal. Features based on magnitude, pitch, and tempo have been found to be informative for classifying musical pieces by genre. We group the features into these categories. These features are calculated from the Fourier transform’s magnitude spectrum. By analyzing the data and exploring it, we develop knowledge about features that can be used for classification, and finally using an information ranking classifier to select the best feature. Finally, Support Vector Machines had the best performance with an accuracy of 81.85% when classifying Spotify music into 20 genres.
基于傅里叶变换和支持向量机的音乐分类
音乐信息检索是计算机科学中一个活跃的研究领域。在本文中,我们使用音乐信号的特征子集进行音乐类型分类。基于大小、音高和速度的特征被发现对音乐作品的类型分类提供了信息。我们将这些特征分为以下几类。这些特征是从傅里叶变换的幅度谱中计算出来的。通过对数据的分析和探索,我们开发了可以用于分类的特征知识,最后使用信息排序分类器来选择最佳特征。最后,支持向量机在将Spotify音乐分为20种类型时表现最佳,准确率为81.85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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