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Music Emotions Recognition Based on Feature Analysis

机译:基于特征分析的音乐情感识别

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摘要

Music emotions recognition (MER) is a challenging field of studies addressed in multiple disciplines such as musicology, cognitive science, psychology, arts and affective computing. In this paper, music emotions are classified into four types known as exciting, happy, serene and sad. MER is formulated as a classification problem in cognitive computing where music features are extracted. And, the feature sets are input into Support Vector Machine (SVM) and Convolutional Neural Networks to classify the music emotion. It can be seen that the best accuracy of 88.2% in VGG16 where Chirplet has been turned into features images. The results show that the feature graph is feasible for music emotion classification.
机译:音乐情感识别(MER)是一个充满挑战的研究领域,涉及多个学科,例如音乐学,认知科学,心理学,艺术和情感计算。在本文中,音乐情感被分为四种类型,分别是激动,快乐,宁静和悲伤。 MER被公式化为认知计算中的一个分类问题,其中提取了音乐特征。并且,将特征集输入到支持向量机(SVM)和卷积神经网络中以对音乐情感进行分类。可以看出,在将Chirplet转换为特征图像的VGG16中,最佳精度为88.2 \%。结果表明,该特征图对于音乐情感分类是可行的。

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