Two-layer large-scale cover song identification system based on music structure segmentation

Kang Cai, Deshun Yang, Xiaoou Chen
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引用次数: 5

Abstract

This paper focuses on cover song identification over a large-scale dataset. Identifying all covers of a query song from music collection is a challenging task since covers vary in multiple aspects, such as tempo, key, and structure. For the large-scale dataset, cover song identification is more challenging and few works have been published. Previous works usually use a single representation for a whole song, such as 2D Fourier transform and chord profiles, which cannot reflect the property that covers are largely determined by a local similarity. To address this problem, we propose a novel cover song identification method based on music structure segmentation. The proposed structural method identifies cover songs on section level instead of song level. The experimental results show that the structural method improves the mean average precision of 2D Fourier transform method from 9.5% to 12.1%. In addition, we also propose a two-layer cover song identification system to improve the efficiency.
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基于音乐结构分割的双层大型翻唱歌曲识别系统
本文的重点是在一个大规模的数据集上识别翻唱歌曲。从音乐集合中识别查询歌曲的所有翻唱是一项具有挑战性的任务,因为翻唱在许多方面都不同,例如节奏、键和结构。对于大规模的数据集,翻唱歌曲的识别更具挑战性,并且发表的作品很少。以前的作品通常对整首歌使用单一的表示,如二维傅里叶变换和和弦谱,这不能反映歌曲在很大程度上由局部相似性决定的特性。为了解决这一问题,我们提出了一种基于音乐结构分割的翻唱歌曲识别方法。本文提出的结构方法是在片段级别而不是歌曲级别上识别翻唱歌曲。实验结果表明,该方法将二维傅里叶变换方法的平均精度从9.5%提高到12.1%。此外,我们还提出了一种双层翻唱歌曲识别系统,以提高效率。
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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