Barwise Music Structure Analysis with the Correlation Block-Matching Segmentation Algorithm

Axel Marmoret, J'er'emy E. Cohen, Fr'ed'eric Bimbot
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Abstract

Music Structure Analysis (MSA) is a Music Information Retrieval task consisting of representing a song in a simplified, organized manner by breaking it down into sections typically corresponding to ``chorus'', ``verse'', ``solo'', etc. In this work, we extend an MSA algorithm called the Correlation Block-Matching (CBM) algorithm introduced by (Marmoret et al., 2020, 2022b). The CBM algorithm is a dynamic programming algorithm that segments self-similarity matrices, which are a standard description used in MSA and in numerous other applications. In this work, self-similarity matrices are computed from the feature representation of an audio signal and time is sampled at the bar-scale. This study examines three different standard similarity functions for the computation of self-similarity matrices. Results show that, in optimal conditions, the proposed algorithm achieves a level of performance which is competitive with supervised state-of-the-art methods while only requiring knowledge of bar positions. In addition, the algorithm is made open-source and is highly customizable.
利用相关块匹配分割算法进行条形音乐结构分析
音乐结构分析(MSA)是一项音乐信息检索任务,包括通过将歌曲分成通常对应于 "副歌"、"逆歌"、"独唱 "等部分,以简化、有组织的方式表示歌曲。在这项工作中,我们扩展了一种名为 "相关块匹配(CBM)"的 MSA 算法(Marmoret 等人,2020 年,2022b)。CBM 算法是一种动态编程算法,可分割自相似矩阵,自相似矩阵是 MSA 和许多其他应用中使用的标准描述。在这项工作中,自相似性矩阵是从音频信号的特征表示中计算出来的,时间以条形尺度采样。这项研究检验了计算自相似矩阵的三种不同标准相似性函数。结果表明,在最佳条件下,所提出的算法只需了解小节位置,就能达到与有监督的最先进方法相媲美的性能水平。此外,该算法开源且高度可定制。
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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