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Music Emotion Recognition with the Extraction of Audio Features Using Machine Learning Approaches

机译:使用机器学习方法提取音频功能的音乐情感识别

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摘要

Music is the covered up arithmetical exercise of a mind oblivious that it is figuring. Music not being just an extravagant language for human emotion is also a key itself for identifying the human emotion. Researches indicate that music causes stimulation through specific brain circuits to produce emotions. Listening to a piece of music can manipulate a person to feel joyous or brooding according to the emotion included in the music. But the perennial challenge is to examine the correlation between music and the subsequent effect on emotion. This music emotion recognition (MER) system can be used for simplistic music information retrieval. In this paper using (Music Information Retrieval) MIR Toolbox in Matlab, eight distinct features were extracted from 100 songs of various genres and similar emotions were clustered into four categories using the Russell's Two Dimensional Emotion Model. Mapping the extracted features into the four emotion classes, several machine-learning classifiers were trained. A set of unknown songs were used to validate the recognition accuracy. Along with the common features like pitch, timbre, rhythm etc. roll-off and brightness were also used. Roll-off showed a great priority in Random Forest feature ranking. With all these features combined, a highest prediction accuracy of 75% was found from artificial neural network (ANN) among the others classifiers like Support Vector Machine (SVM), linear discriminant, and Ensemble learner.
机译:音乐是掩盖的算术练习,令人沮丧的思维令人难以置疑。音乐不是奢侈的人类情感语言也是识别人类情绪的关键。研究表明,音乐通过特定脑电路导致刺激产生情绪。聆听一张音乐可以操纵一个人感到根据音乐中包含的情绪感到欢乐或沉思。但常年挑战是审查音乐与随后对情绪影响之间的相关性。这种音乐情感识别(MER)系统可用于简单的音乐信息检索。在本文中使用(Music Information Retroval)MIR Toolbox在Matlab中,从100个各种类型的歌曲中提取了八个不同的特征,并使用Russell的二维情绪模型将类似的情绪聚集成四类。将提取的特征映射到四个情绪类中,几种机器学习分类器受过培训。使用一组未知歌曲用于验证识别准确性。除了像俯仰,音色,节奏等等共同特征。还使用卷降和亮度。滚动在随机森林特征排名中表现出良好的优先事项。所有这些特征组合,75%的最高的预测精度是从其他分类器等的支持向量机(SVM),线性判别,和合奏学习者中的人工神经网络(ANN)找到。

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