音乐情绪注释器的设计和集成

C. Laurier, O. Meyers, J. Serrà, Martin Blech, P. Herrera
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引用次数: 22

摘要

提出了一种鲁棒高效的音乐情绪自动标注技术。歌曲的情绪是通过一种基于从原始音频信号中提取的音乐特征的监督机器学习方法来表达的。一个用于培训的基本事实是由社会网络信息系统和个人专家共同创建的。对7种不同的分类配置进行了测试,表明支持向量机对手头的任务表现最好。此外,我们还评估了算法对不同音频压缩方案的鲁棒性。这个经常被忽视的事实是构建一个在实际条件下可用的系统的基础。此外,还讨论了该技术与欧洲项目PHAROS的快速和可扩展版本的集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Music Mood Annotator Design and Integration
A robust and efficient technique for automatic music mood annotation is presented. A song's mood is expressed by a supervised machine learning approach based on musical features extracted from the raw audio signal. A ground truth, used for training, is created using both social network information systems and individual experts. Tests of 7 different classification configurations have been performed, showing that Support Vector Machines perform best for the task at hand. Moreover, we evaluate the algorithm robustness to different audio compression schemes. This fact, often neglected, is fundamental to build a system that is usable in real conditions. In addition, the integration of a fast and scalable version of this technique with the European Project PHAROS is discussed.
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