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A Multimodal Approach to Song-Level Style Identification in Pop/Rock Using Similarity Metrics

机译:基于相似性度量的流行音乐/摇滚乐歌曲风格识别的多模态方法

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This paper presents a multimodal approach to style identification in pop/rock music. Considering the intuitive feelings of similarity from the listener's perspective, this study focuses on features that are computed using similarity metrics for melodies, harmonies, and audio signals for style identification. Support vector machine is used as a binary classifier to determine if two songs are created by the same artist given their similarity distances in the three aspects. Experiments are conducted using songs of four well-known pop/rock bands from 6 albums. The preliminary result shows that the approach achieves the best result in correct rate of 85% using only seven similarity metrics.
机译:本文提出了一种流行音乐/摇滚音乐风格识别的多模式方法。考虑到从听众的角度来看直观的相似感,本研究着重于使用相似度指标来计算旋律,和声和音频信号来进行风格识别的特征。支持向量机用作二进制分类器,以确定在相同方面,这两个歌曲是否是由同一位艺术家创作的,因为它们在三个方面的相似距离。实验是使用来自6张专辑的四个知名流行/摇滚乐队的歌曲进行的。初步结果表明,该方法仅使用七个相似性指标即可达到85%的正确率的最佳结果。

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