Song Emotion Detection Based on Arousal-Valence from Audio and Lyrics Using Rule Based Method

Fika Hastarita Rachman, Riyanarto Samo, C. Fatichah
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引用次数: 3

Abstract

Arousal and Valence value represent of song emotions. Arousal is an emotional dimension of musically energy level, while Valence is an emotional dimension of the comfortable level of the listener. Label emotion of Thayer using Arousal and Valence dimension. This research proposed a rule base method for detecting song emotion using arousal and valence values, however many studies do not use this data. The datasets are audio and lyric features of the song structural segment chorus. Preprocessing of Audio and lyric data are uses Correlation Feature Selection (CFS) and preprocessing text. Audio feature extraction is using MIRToolbox. Stylistic and psycholinguistic are used for lyrics feature extraction. Rule based method is used to detect the emotions of the whole song by using the predictive feature of the arousal and valence values. The arousal and valence prediction values are representing withmatrices of frequencyfor audio and lyrics. From the analysis of testing data, it shows that the audio feature more represents the value of Valence while the lyrics feature more represents the Arousal value. There are seven (7) rule base models that used in this research, the best accuracy is 0.798.
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基于规则的音频和歌词唤醒价的歌曲情感检测
唤醒值和效价值代表歌曲情绪。唤醒是音乐能量水平的情感维度,效价是听者舒适程度的情感维度。用唤醒和效价维度标记塞耶的情绪。本研究提出了一种基于规则的方法,利用唤醒和价值来检测歌曲情绪,然而许多研究并没有使用这些数据。数据集是歌曲结构段合唱的音频和歌词特征。音频和歌词数据的预处理采用了相关特征选择(CFS)和文本预处理。音频特征提取是使用MIRToolbox。从文体和心理语言学两方面对歌词特征进行了提取。采用基于规则的方法,利用唤醒值和价值的预测特征来检测整首歌曲的情绪。唤醒值和效价预测值用音频和歌词的频率矩阵表示。从测试数据的分析可以看出,音频特征更多地代表Valence值,而歌词特征更多地代表Arousal值。本研究共使用了7个规则库模型,最佳准确率为0.798。
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