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Feature Selection and Comparison for the Emotion Recognition According to Music Listening

机译:根据音乐聆听的情感识别特征选择和比较

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Recently, researches on analyzing relationship between the state of emotion and musical stimuli using EEG are increasing. These research shows that a selection of feature vectors is very important for the performance of EEG pattern classifiers. In this paper, we apply feature extraction methods, which were reviewed in the previous, to DEAP data for the emotion recognition. We limit to analysis features in time-domain for this research. To evaluate the feature vectors, the Relief algorithm and the Bhattacharyya distance are used. According to result, the power of signal is better for the emotion recognition than the other feature.
机译:最近,利用脑电图的情绪状态与音乐刺激状态之间的关系正在增加。这些研究表明,选择特征向量对于EEG模式分类器的性能非常重要。在本文中,我们应用了特征提取方法,该方法在之前审查,以进行情感认可的DEAP数据。我们限制了该研究时域中的分析功能。为了评估特征向量,使用释放算法和Bhattacharyya距离。根据结果​​,信号的功率更好地用于情绪识别而不是其他特征。

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