Ji Yerim, Dong Suh-Yeon
Department of Information Technology Engineering, Sookmyung Women's University, Seoul, South Korea.
Front Neurosci. 2022 Sep 16;16:985709. doi: 10.3389/fnins.2022.985709. eCollection 2022.
Emotion recognition from electroencephalogram (EEG) signals requires accurate and efficient signal processing and feature extraction. Deep learning technology has enabled the automatic extraction of raw EEG signal features that contribute to classifying emotions more accurately. Despite such advances, classification of emotions from EEG signals, especially recorded during recalling specific memories or imagining emotional situations has not yet been investigated. In addition, high-density EEG signal classification using deep neural networks faces challenges, such as high computational complexity, redundant channels, and low accuracy. To address these problems, we evaluate the effects of using a simple channel selection method for classifying self-induced emotions based on deep learning. The experiments demonstrate that selecting key channels based on signal statistics can reduce the computational complexity by 89% without decreasing the classification accuracy. The channel selection method with the highest accuracy was the kurtosis-based method, which achieved accuracies of 79.03% and 79.36% for the valence and arousal scales, respectively. The experimental results show that the proposed framework outperforms conventional methods, even though it uses fewer channels. Our proposed method can be beneficial for the effective use of EEG signals in practical applications.
从脑电图(EEG)信号中进行情绪识别需要准确且高效的信号处理和特征提取。深度学习技术能够自动提取原始EEG信号特征,有助于更准确地对情绪进行分类。尽管有这些进展,但从EEG信号中进行情绪分类,尤其是在回忆特定记忆或想象情绪情境时所记录的信号,尚未得到研究。此外,使用深度神经网络进行高密度EEG信号分类面临着诸如高计算复杂度、冗余通道和低准确率等挑战。为了解决这些问题,我们评估了基于深度学习使用简单通道选择方法对自我诱发情绪进行分类的效果。实验表明,基于信号统计选择关键通道可在不降低分类准确率的情况下将计算复杂度降低89%。准确率最高的通道选择方法是基于峰度的方法,其在效价和唤醒量表上分别达到了79.03%和79.36%的准确率。实验结果表明,即使使用较少的通道,所提出的框架也优于传统方法。我们提出的方法对于在实际应用中有效利用EEG信号可能是有益的。