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Detection of Music Preferences using Cerebral Blood Flow Signals

机译:使用脑血流信号检测音乐偏好

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Music has been used for entertainment as well as for medical treatments that remedies physical conditions or psychiatric disorders. It is reported that better outcome can be expected when the music was selected along with personal preferences for these therapies. However it is difficult to find out personalized favorite music if the patient has difficulty in verbal communication due to ageing or developmental disorders. Therefore, this study aimed to develop an objective classification method of music preference based on cortical hemodynamic activities upon listening to the music clips. Fifteen healthy young adults listened their favorite and non-favorite music with their cortical activity measured with 38-channel functional near infrared spectroscopy (fNIRS). Eleven features were extracted from the time-courses of fNIRS signals from the left primary auditory area, the superior temporal gyrus, and the subcentral area. One- to four- dimensional features were individually selected using a leave-one-out cross-validation with two classification algorithms of Fisher linear discriminant analysis (LDA) and support vector machine. The best mean accuracy rate of 92.2 ± 1.7% was obtained when an LDA classifier with four features derived from oxy-hemoglobin signals were adopted showing that our proposed method is valid to classify individual music preference.
机译:音乐已被用于娱乐以及治疗身体状况或精神病疾病的医疗治疗。据报道,当音乐选择与这些疗法的个人偏好以及个人偏好时,可以预期更好的结果。然而,如果由于老化或发育障碍导致的口头通信难以找到个性化最喜欢的音乐。因此,本研究旨在基于在听音乐剪辑时基于皮质血流动力学活动来开发一种音乐偏好的客观分类方法。十五个健康的年轻成年人听了他们最喜欢的和非喜爱的音乐,其皮质活动用38通道功能靠近红外光谱(Fnirs)。从左主听区域,较高的颞克鲁斯和亚间中心区域的Fnirs信号的时间路线提取11个特征。使用具有两个分类算法(LDA)和支持向量机的休假次算法单独选择单独选择的一对四维特征。当采用具有来自血红蛋白信号的四个特征的LDA分类器显示我们所提出的方法有效以分类单个音乐偏好时,获得了92.2±1.7%的最佳平均精度率。

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