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Automatic mood detection and tracking of music audio signals

机译:自动情绪检测和音乐音频信号跟踪

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摘要

Music mood describes the inherent emotional expression of a music clip. It is helpful in music understanding, music retrieval, and some other music-related applications. In this paper, a hierarchical framework is presented to automate the task of mood detection from acoustic music data, by following some music psychological theories in western cultures. The hierarchical framework has the advantage of emphasizing the most suitable features in different detection tasks. Three feature sets, including intensity, timbre, and rhythm are extracted to represent the characteristics of a music clip. The intensity feature set is represented by the energy in each subband, the timbre feature set is composed of the spectral shape features and spectral contrast features, and the rhythm feature set indicates three aspects that are closely related with an individual's mood response, including rhythm strength, rhythm regularity, and tempo. Furthermore, since mood is usually changeable in an entire piece of classical music, the approach to mood detection is extended to mood tracking for a music piece, by dividing the music into several independent segments, each of which contains a homogeneous emotional expression. Preliminary evaluations indicate that the proposed algorithms produce satisfactory results. On our testing database composed of 800 representative music clips, the average accuracy of mood detection achieves up to 86.3%. We can also on average recall 84.1% of the mood boundaries from nine testing music pieces.
机译:音乐心情描述了音乐剪辑的固有情感表达。它有助于理解音乐,检索音乐以及其他一些与音乐相关的应用程序。在本文中,通过遵循西方文化中的一些音乐心理学理论,提出了一个层次结构的框架来自动执行从声学音乐数据中进行情绪检测的任务。分层框架的优势在于可以在不同的检测任务中强调最合适的功能。提取三个特征集,包括强度,音色和节奏,以代表音乐剪辑的特征。强度特征集由每个子带中的能量表示,音色特征集由频谱形状特征和频谱对比特征组成,节奏特征集指示与个人情绪反应密切相关的三个方面,包括节奏强度,节奏规律性和节奏。此外,由于情绪通常在整个古典音乐中都是可变的,因此通过将音乐分为几个独立的段来将情绪检测的方法扩展到音乐曲目的情绪跟踪,每个段中包含同质的情感表达。初步评估表明,所提出的算法产生了令人满意的结果。在我们的由800个代表性音乐片段组成的测试数据库中,情绪检测的平均准确率达到了86.3%。我们平均还可以从9个测试音乐作品中回忆出84.1%的情绪边界。

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