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Emotion Recognition from EEG during Self-Paced Emotional Imagery

机译:从脑电图的情感识别在自我节奏的情感图像中

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Here we present an analysis of a 12-subject electroencephalographic (EEG) data set in which participants were asked to engage in prolonged, self-paced episodes of guided emotion imagination with eyes closed. Our goal is to correctly predict, given a short EEG segment, whether the participant was imagining a positive respectively negative-valence emotional scenario during the given segment using a predictive model learned via machine learning. The challenge lies in generalizing to novel (i.e., previously unseen) emotion episodes from a wide variety of scenarios including love, awe, frustration, anger, etc. based purely on spontaneous oscillatory EEG activity without stimulus event-locked responses. Using a variant of the Filter-Bank Common Spatial Pattern algorithm, we achieve an average accuracy of 71.3% correct classification of binary valence rating across 12 different emotional imagery scenarios under rigorous block-wise cross-validation.
机译:在这里,我们展示了对12次脑电图(EEG)数据集的分析,其中要求参与者在闭目间闭着眼睛的导向情感想象力的长期,自定节断。我们的目标是考虑到一个短期段,参与者是否在使用通过机器学习中学到的预测模型在给定的段中想象一个积极的负价情绪情景。挑战在于从包括爱情,敬畏,挫折,愤怒等的各种场景的小说(即,先前未见)情绪发作概括为纯粹对没有刺激事件锁定的反应的自发振荡的脑电图。使用滤波器组通用空间模式算法的变型,我们在严格的块横跨交叉验证下,在12个不同的情绪图像场景中达到了71.3%的平均精度为71.3%的二元价值等级分类。

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