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Music emotion classification using double-layer support vector machines

机译:使用双层支持向量机的音乐情感分类

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This paper presents a two-layer system for detecting emotion in music. The selected target emotion classes are angry, happy, sad, and peaceful. We presented an audio feature set comprising the following types of audio features: dynamics, rhythm, timbre, pitch, and tonality. With the feature set, a support vector machines (SVMs) is applied to each target emotion class with calm emotion as the background class to train a hyperplane. With the four hyperplanes trained from angry, happy, sad, and peaceful, each test clip can output four decision values. This decision values are regarded as the new features to train a second-layer SVMs for classifying the four target emotion classes. The experiment result shows that our double layer system has a good performance on music emotion classification.
机译:本文提出了一种用于检测音乐中情感的两层系统。选择的目标情感类别是生气,快乐,悲伤和和平。我们介绍了一种音频功能集,包括以下类型的音频功能:动态,节奏,音色,音调和音调。通过该功能集,将支持向量机(SVM)应用于具有平静情绪作为背景类别的每个目标情绪类别,以训练超平面。通过从愤怒,快乐,悲伤和和平中训练出的四个超平面,每个测试片段都可以输出四个决策值。该决策值被视为训练第二层SVM以对四个目标情绪类别进行分类的新功能。实验结果表明,我们的双层系统在音乐情感分类上具有良好的表现。

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