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Music Emotion Recognition Using a Variant of Recurrent Neural Network

机译:使用经常性神经网络的变种音乐情感识别

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Searching music by emotion has always been strongly needed by users. Since music streaming applications usually have tens millions of music pieces in database, it is impossible to label emotion tags for each music piece manually. It is desired that an intelligent algorithm can recognize emotion expressed by music automatically. Valence-Arousal model is a widely used for representing emotion, but the angle of vectors on V-A plane labeled by different raters usually varies greatly, which makes it difficult to train classification models. We are trying to introduce a label space defined by pairs of antonyms, which makes emotion label relatively objective. We also used a variant model of recurrent neural network in the paper, in this model, RNN is a mean to extract features from melody, and with other features calculated by normal machine learning algorithms, this model can make a good prediction of emotions.
机译:通过情感搜索音乐一直被用户强烈要求。由于音乐流媒体应用程序通常在数据库中具有数百万乐曲的音乐作品,因此无法手动为每个音乐件标记情绪标签。希望智能算法可以识别自动音乐表达的情绪。价值 - 唤醒模型是一种广泛用于代表情绪,但由不同评估者标记的V-A平面上的载体的角度通常很大变化,这使得训练分类模型难以训练。我们正试图介绍由对反义词定义的标签空间,这使情感标签相对客观。我们还在本文中使用了反复性神经网络的变体模型,在此模型中,RNN是一种意义,是从旋律中提取特征的含义,以及由正常机器学习算法计算的其他特征,这种模型可以良好地预测情绪。

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