基于个体的脑电效价估计

Bora Cebeci, A. Akan, T. Demiralp, M. Erbey
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引用次数: 0

摘要

本研究确定了用于估计情绪负效价的基于个体的特征,并比较了这些特征在不同分类器上的有效性。将10个电影片段作为情绪刺激放映给受试者,同时记录脑电图记录。视频结束后,受试者立即用[-7 -7]李克特量表对情绪效价值进行评分。根据最低价和最高价,生成了两类。数据以个人为基础进行处理,通过独立成分分析获得个人空间过滤器。在计算空间滤波数据的频谱图后,通过减去3Hz平均频带的幅值提取特征。特征选择的结果表明,来自β和γ波段的特征更有效。通过交叉验证,用5种分类器对所选特征的成功率进行了测试,多层感知器分类器和基于实例的k近邻算法(IBk-NN)获得了较高的性能。IBk-NN和多层分类器的平均准确率分别达到86%±8和83%±9。
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Individual-based Estimation of Valence with EEG
In this study, it is determined individual-based features which are used to estimate emotional negative valence and compared the features effectiveness with different classifiers. Ten movie clips are shown to subjects as an emotional stimuli and EEG recording is recorded synchronously. Emotional valence value is scored in [–7 7] Likert scale by the subjects immediately after video ended. According to lowest and highest valence values, two classes are generated. The data is processed on an individual basis and personal spatial filters is obtained by Independent Component Analysis. After calculating the spectrogram of the spatial filtered data, features are extracted by subtracting amplitudes of 3Hz averaged frequency bands. The result of feature selection, it is observed that features from beta and gamma bands are much more effective. The success rate of the selected features was tested with five classifiers by cross validation, and high performance was obtained from multilayer perceptron classifiers and the instance- based k-nearest neighborhood algorithm (IBk-NN). The average accuracies of IBk-NN and multilayer classifier are achieved 86% ±8 and 83% ±9, respectively.
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