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Adaptive Emotional Information Retrieval From EEG Signals in the Time-Frequency Domain

机译:自适应情感信息从时频域中的EEG信号检索

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This paper aims at developing adaptive methods for electroencephalogram (EEG) signal segmentation in the time-frequency domain, in order to effectively retrieve the emotion-related information within the EEG recordings. Using the multidimensional directed information analysis supported by the frontal brain asymmetry in the case of emotional reaction, a criterion, namely asymmetry index , is used to realize the proposed segmentation processes that take into account both the time and frequency (in the empirical mode decomposition domain) emotionally related EEG components. The efficiency of the -based “emotional” filters was justified through an extensive classification process, using higher-order crossings and cross-correlation as feature-vector extraction techniques and a support vector machine classifier for six different classification scenarios in the valence/arousal space. This resulted in mean classification rates from 64.17% up to 82.91% in a user-independent base, revealing the potential of establishing such a filtering for reliable EEG-based emotion recognition systems.
机译:本文旨在开发时频域中的脑电图(EEG)信号分割的自适应方法,以便有效地检索EEG记录内的情绪相关信息。使用在情绪反应的情况下,使用正面脑不对称支持的多维定向信息分析,使用标准,即不对称指数,用于实现所提出的分割过程,以考虑时间和频率(在经验模式分解域中)情绪相关的EEG组件。通过广泛的分类过程,使用更高阶交叉和互相关作为特征 - 矢量提取技术和支持向量机分类器,在价值/唤醒空间中的六种不同分类场景的支持向量机分类器的效率是合理的。 。这导致平均分类率在用户无关的基础上的64.17%,揭示了为可靠的基于EEG的情感识别系统建立这种过滤的可能性。

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