Pre-AI Musical Style Analysis Via Their Spectral Distributions

Antonela Toma, Theodor-Corneliu Fratu-Halung, Andrei Beliciu
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Abstract

In this paper, we will revisit a pre-AI method of identifying musical genres. To do that, the spectrograms of a number of fragments of melodies belonging to various genres will be generated, with the aid of the spectrum analyser included in the Digital Signal Processing Toolbox from Simulink, Matlab, as well as the spectrum analyser of the audio editing and analysis program Audacity. Then, there will be an attempt at identifying the defining spectral features for each of the analysed genres, with the aim of identifying said genres via Fourier analysis. Included in this paper will be a revision of key theoretical concepts pertaining to the Fourier analysis of analog signals as well as digital, as well as an enumeration of the relevant musical theory concepts.
通过谱分布分析前ai音乐风格
在本文中,我们将重新审视一种前ai识别音乐类型的方法。为此,将借助Simulink、Matlab中的数字信号处理工具箱中的频谱分析仪,以及音频编辑和分析程序Audacity中的频谱分析仪,生成属于不同流派的许多旋律片段的频谱图。然后,将尝试识别每个分析类型的定义光谱特征,目的是通过傅里叶分析识别所述类型。本文将包括对模拟信号和数字信号的傅立叶分析的关键理论概念的修订,以及相关音乐理论概念的列举。
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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