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首页> 外文期刊>Journal of Artificial Intelligence and Soft Computing Research >Towards Effective Music Therapy for Mental Health Care Using Machine Learning Tools: Human Affective Reasoning and Music Genres
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Towards Effective Music Therapy for Mental Health Care Using Machine Learning Tools: Human Affective Reasoning and Music Genres

机译:利用机器学习工具对精神保健的有效音乐疗法:人类情感推理和音乐类型

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Music has the ability to evoke different emotions in people, which is reflected in their physiological signals. Advances in affective computing have introduced computational methods to analyse these signals and understand the relationship between music and emotion in greater detail. We analyse Electrodermal Activity (EDA), Blood Volume Pulse (BVP), Skin Temperature (ST) and Pupil Dilation (PD) collected from 24 participants while they listen to 12 pieces from 3 different genres of music. A set of 34 features were extracted from each signal and 6 different feature selection methods were applied to identify useful features. Empirical analysis shows that a neural network (NN) with a set of features extracted from the physiological signals can achieve 99.2% accuracy in differentiating among the 3 music genres. The model also reaches 98.5% accuracy in classification based on participants’ subjective rating of emotion. The paper also identifies some useful features to improve accuracy of the classification models. Furthermore, we introduce a new technique called ’Gingerbread Animation’ to visualise the physiological signals we record as a video, and to make these signals more comprehensible to the human eye, and also appropriate for computer vision techniques such as Convolutional Neural Networks (CNNs). Our results overall provide a strong motivation to investigate the relationship between physiological signals and music, which can lead to improvements in music therapy for mental health care and musicogenic epilepsy reduction (our long term goal).
机译:音乐有能力唤起人们不同的情绪,这反映在他们的生理信号中。情感计算的进步引入了计算方法来分析这些信号,并更详细地了解音乐和情绪之间的关系。我们分析了24名参与者收集的电熨细活性(EDA),血容量脉冲(BVP),皮肤温度(ST)和瞳孔扩张(PD),同时从3种不同的音乐类型收听12件。从每个信号中提取一组34个特征,并应用6种不同的特征选择方法来识别有用的特征。实证分析表明,具有从生理信号中提取的一组特征的神经网络(NN)可以在3次音乐类型之间实现99.2%的精度。该模型在参与者的情感主观评级,分类的准确性也达到了98.5%。本文还识别了一些有用的功能,以提高分类模型的准确性。此外,我们介绍了一种名为“姜饼动画”的新技术,可视化我们作为视频记录的生理信号,并使这些信号更加可理解对人眼更可理解,并且还适用于卷积神经网络(CNNS)等计算机视觉技术。我们的成果总体来说,探讨了生理信号与音乐之间的关系,这可能导致精神保健和播放癫痫减少的音乐治疗(我们的长期目标)。

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