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Melodious Micro-frissons: Detecting Music Genres From Skin Response

机译:悠扬的微frissons:从皮肤反应检测音乐流派

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The relationship between music and human physiological signals has been a topic of interest among researchers for many years. Understanding this relationship can not only lead to more enhanced music therapy methods, but it may also help in finding a cure to mental disorders and epileptic seizures that are triggered by certain music. In this paper, we investigate the effects of 3 different genres of music in participants’ Electrodermal Activity (EDA). Signals were recorded from 24 participants while they listened to 12 music stimuli. Various feature selection methods were applied to a number of features which were extracted from the signals. A simple neural network using Genetic Algorithm (GA) feature selection can reach as high as 96.8% accuracy in classifying 3 different music genres. Classification based on participants’ subjective rating of emotion reaches 98.3% accuracy with the Statistical Dependency (SD) / Minimal Redundancy Maximum Relevance (MRMR) feature selection technique. This shows that human emotion has a strong correlation with different types of music. In the future this system can be used to distinguish music based on their positive of negative effect on human mental health.
机译:音乐与人类生理信号之间的关系多年来一直是研究人员感兴趣的话题。理解这种关系不仅可以带来更多的音乐治疗方法,而且还可以帮助找到治疗某些音乐触发的精神障碍和癫痫发作的方法。在本文中,我们研究了3种不同流派的音乐对参与者的皮肤电活动(EDA)的影响。在聆听12个音乐刺激时,有24位参与者记录了信号。各种特征选择方法应用于从信号中提取的许多特征。使用遗传算法(GA)特征选择的简单神经网络在对3种不同音乐类型进行分类时可以达到高达96.8%的准确性。通过统计依存度(SD)/最小冗余最大相关度(MRMR)特征选择技术,基于参与者对情感的主观评价进行分类的准确率达到98.3%。这表明人的情感与不同类型的音乐有很强的相关性。将来,该系统可用于根据音乐对人类心理健康的负面影响来区分音乐。

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