Acoustic Features for Recognizing Musical Artist Influence

Brandon G. Morton, Youngmoo E. Kim
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引用次数: 3

Abstract

Musicologists have been interested in the topic of influence between composers for years and have developed methods and heuristics for recognizing influence in classical music. While these methods work well for music where the score is the primary source of information, this type of analysis is not well suited for modern popular music where the audio recording itself is arguably the primary representation. This paper presents two audio content-based systems for influence recognition: a system using a spectral representation (Constant-q transform) and support vector machines and another system that obtains features by using a deep belief network and then logistic regression for classification. The system using the spectral representation provides a baseline for future comparisons and evidence to support the idea that influence recognition can be performed using information extracted from the audio signal. The other system attempts to improve performance by using a deep belief network to learn features useful for influence recognition by mapping data extracted from the audio signal to labeled influence data. A dataset of about 77,000 30-second audio clips, consisting of retail previews of popular music tracks was gathered for this work. These songs were chosen from expertly-labeled influence relationship information gathered by the editors of the AllMusic guide.
识别音乐艺术家影响的声学特征
音乐学家多年来一直对作曲家之间的影响感兴趣,并开发了识别古典音乐影响的方法和启发式。虽然这些方法适用于乐谱作为主要信息来源的音乐,但这种类型的分析并不适合现代流行音乐,因为音频记录本身就是主要的表现形式。本文提出了两种基于音频内容的影响识别系统:一种系统使用频谱表示(常数q变换)和支持向量机,另一种系统使用深度信念网络获取特征,然后使用逻辑回归进行分类。使用频谱表示的系统为未来的比较提供了基线,并为支持可以使用从音频信号中提取的信息进行影响识别的想法提供了证据。另一个系统试图通过使用深度信念网络来学习对影响识别有用的特征,通过将从音频信号中提取的数据映射到标记的影响数据来提高性能。为这项工作收集了大约77,000个30秒音频片段的数据集,包括流行音乐曲目的零售预览。这些歌曲是从AllMusic指南的编辑收集的专家标记的影响关系信息中挑选出来的。
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