An Affective EEG Analysis Method Without Feature Engineering

Jian Zhang, Chunying Fang, Yanghao Wu, Mingjie Chang
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Abstract

Emotional electroencephalography (EEG) signals are a primary means of recording emotional brain activity.Currently, the most effective methods for analyzing emotional EEG signals involve feature engineering and neuralnetworks. However, neural networks possess a strong ability for automatic feature extraction. Is it possible to discardfeature engineering and directly employ neural networks for end-to-end recognition? Based on the characteristics of EEGsignals, this paper proposes an end-to-end feature extraction and classification method for a dynamic self-attention network(DySAT). The study reveals significant differences in brain activity patterns associated with different emotions acrossvarious experimenters and time periods. The results of this experiment can provide insights into the reasons behind thesedifferences.
无需特征工程的情感脑电图分析方法
情绪脑电图(EEG)信号是记录大脑情绪活动的主要手段。目前,分析情绪脑电图信号最有效的方法包括特征工程和神经网络。然而,神经网络具有很强的自动特征提取能力。是否可以摒弃特征工程,直接采用神经网络进行端到端的识别呢?本文根据脑电信号的特点,提出了一种端到端的动态自我注意网络(DySAT)特征提取和分类方法。研究揭示了不同实验者和不同时间段内与不同情绪相关的大脑活动模式的显著差异。该实验结果可以帮助人们深入了解这些差异背后的原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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