Kortelainen Jukka, Seppänen Tapio
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:4287-90. doi: 10.1109/EMBC.2013.6610493.
Emotions are fundamental for everyday life affecting our communication, learning, perception, and decision making. Including emotions into the human-computer interaction (HCI) could be seen as a significant step forward offering a great potential for developing advanced future technologies. While the electrical activity of the brain is affected by emotions, offers electroencephalogram (EEG) an interesting channel to improve the HCI. In this paper, the selection of subject-independent feature set for EEG-based emotion recognition is studied. We investigate the effect of different feature sets in classifying person's arousal and valence while watching videos with emotional content. The classification performance is optimized by applying a sequential forward floating search algorithm for feature selection. The best classification rate (65.1% for arousal and 63.0% for valence) is obtained with a feature set containing power spectral features from the frequency band of 1-32 Hz. The proposed approach substantially improves the classification rate reported in the literature. In future, further analysis of the video-induced EEG changes including the topographical differences in the spectral features is needed.
情绪对于日常生活至关重要,会影响我们的交流、学习、感知和决策。将情绪纳入人机交互(HCI)可被视为向前迈出的重要一步,为开发先进的未来技术提供了巨大潜力。虽然大脑的电活动会受到情绪影响,但脑电图(EEG)为改善人机交互提供了一个有趣的途径。本文研究了用于基于脑电图的情绪识别的独立于受试者的特征集选择。我们调查了不同特征集在对观看带有情感内容视频的人的唤醒和效价进行分类时的效果。通过应用顺序向前浮动搜索算法进行特征选择来优化分类性能。使用包含1 - 32Hz频段功率谱特征的特征集可获得最佳分类率(唤醒为65.1%,效价为63.0%)。所提出的方法显著提高了文献中报道的分类率。未来,需要进一步分析视频诱发的脑电图变化,包括频谱特征的地形差异。