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首页> 外文期刊>Affective Computing, IEEE Transactions on >Automatic Music Mood Classification Based on Timbre and Modulation Features
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Automatic Music Mood Classification Based on Timbre and Modulation Features

机译:基于音色和调制特征的自动音乐情绪分类

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摘要

In recent years, many short-term timbre and long-term modulation features have been developed for content-based music classification. However, two operations in modulation analysis are likely to smooth out useful modulation information, which may degrade classification performance. To deal with this problem, this paper proposes the use of a two-dimensional representation of acoustic frequency and modulation frequency to extract joint acoustic frequency and modulation frequency features. Long-term joint frequency features, such as acoustic-modulation spectral contrast/valley (AMSC/AMSV), acoustic-modulation spectral flatness measure (AMSFM), and acoustic-modulation spectral crest measure (AMSCM), are then computed from the spectra of each joint frequency subband. By combining the proposed features, together with the modulation spectral analysis of MFCC and statistical descriptors of short-term timbre features, this new feature set outperforms previous approaches with statistical significance.
机译:近年来,为基于内容的音乐分类开发了许多短期音色和长期调制功能。但是,调制分析中的两个操作可能会平滑有用的调制信息,这可能会降低分类性能。为了解决这个问题,本文提出使用声频和调制频率的二维表示来提取联合声频和调制频率特征。然后,根据的频谱计算出长期的联合频率特征,例如声调制频谱对比度/谷值(AMSC / AMSV),声调制频谱平坦度度量(AMSFM)和声调制频谱波峰度量(AMSCM)。每个联合频率子带。通过将提出的功能与MFCC的调制频谱分析以及短期音色特征的统计描述符结合起来,该新特征集在统计意义上优于以前的方法。

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