Combining musical features for cover detection

Guillaume Doras, Furkan Yesiler, Joan Serrà, E. Gómez, G. Peeters
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引用次数: 8

Abstract

Recent works have addressed the automatic cover detection problem from a metric learning perspective. They employ different input representations, aiming to exploit melodic or harmonic characteristics of songs and yield promising performances. In this work, we propose a comparative study of these different representations and show that systems combining melodic and harmonic features drastically outperform those relying on a single input representation. We illustrate how these features complement each other with both quantitative and qualitative analyses. We finally investigate various fusion schemes and propose methods yielding state-of-the-art performances on two publicly-available large datasets.
结合音乐特征的掩护检测
最近的工作从度量学习的角度解决了自动覆盖检测问题。他们采用不同的输入表示,旨在利用歌曲的旋律或和声特征,并产生有希望的表演。在这项工作中,我们提出了对这些不同表示的比较研究,并表明结合旋律和谐波特征的系统大大优于依赖单一输入表示的系统。我们通过定量和定性分析来说明这些特征是如何相互补充的。最后,我们研究了各种融合方案,并提出了在两个公开可用的大型数据集上产生最先进性能的方法。
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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