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Online music emotion prediction on multiple sessions of EEG data using SVM

机译:使用SVM对多个EEG数据会话进行在线音乐情感预测

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Electroencephalogram (EEG) has been used in the domain of emotion recognition, especially during the experience from music stimulus. A number of works have been submitted with promising results in emotion prediction tasks. Unfortunately, the majority of literature did not sufficiently take into account a non-stationary characteristic of EEG signals which could differ in each recording session, and this issue might be underlying reason why such research could not be transferred into real-world application. In this paper, we are proposing a novel solution by introducing a method of normalization across session. In particular, we performed a comparison of several normalization techniques to explore various techniques to address the issue of non-stationary in EEG data. The three proposed techniques in this study are rescaling, z-score standardization, and frequency band percentage. In our experiment, we collected EEG data from ten subjects in two scenarios: consecutive session and time varied session. Our emotion prediction results suggested that z-score technique was superior to other normalization techniques based on using support vector machine (SVM). To encourage other researchers to test the efficiency of their own approach with multiple session data, our dataset is publicly provided.
机译:脑电图(EEG)已用于情感识别领域,尤其是在音乐刺激过程中。在情感预测任务中已经提交了许多有希望的成果。不幸的是,大多数文献没有充分考虑到脑电信号的非平稳特征,这种特征在每个记录过程中可能会有所不同,并且这个问题可能是无法将此类研究转化为现实应用的根本原因。在本文中,我们通过引入跨会话规范化的方法来提出一种新颖的解决方案。特别是,我们对几种归一化技术进行了比较,以探索各种技术来解决EEG数据中的非平稳性问题。本研究中提出的三种技术是缩放,z分数标准化和频带百分比。在我们的实验中,我们在两种情况下从十个受试者中收集了EEG数据:连续会话和随时间变化的会话。我们的情绪预测结果表明,基于使用支持向量机(SVM)的z评分技术优于其他归一化技术。为了鼓励其他研究人员使用多个会话数据测试他们自己的方法的效率,我们公开提供了我们的数据集。

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