Samal Priyadarsini, Hashmi Mohammad Farukh
Department of Electronics and Communication Engineering, National Institute of Technology, Warangal, Telangana, India.
Comput Methods Biomech Biomed Engin. 2024 Jun 26:1-24. doi: 10.1080/10255842.2024.2369257.
Emotion recognition using EEG is a difficult study because the signals' unstable behavior, which is brought on by the brain's complex neuronal activity, makes it difficult to extract the underlying patterns inside it. Therefore, to analyse the signal more efficiently, in this article, a hybrid model based on IEMD-KW-Ens (Improved Empirical Mode Decomposition-Kruskal Wallis-Ensemble classifiers) technique is used. Here IEMD based technique is proposed to interpret EEG signals by adding an improved sifting stopping criterion with median filter to get the optimal decomposed EEG signals for further processing. A mixture of time, frequency and non-linear distinct features are extracted for constructing the feature vector. Afterward, we conducted feature selection using KW test to remove the insignificant ones from the feature set. Later the classification of emotions in three-dimensional model is performed in two categories i.e. machine learning based RUSBoosted trees and deep learning based convolutional neural network (CNN) for DEAP and DREAMER datasets and the outcomes are evaluated for valence, arousal, and dominance classes. The findings demonstrate that the hybrid model can successfully classify emotions in multichannel EEG signals. The decomposition approach is also instructive for improving the model's utility in emotional computing.
利用脑电图(EEG)进行情绪识别是一项困难的研究,因为大脑复杂的神经元活动所带来的信号不稳定行为,使得难以提取其中潜在的模式。因此,为了更有效地分析信号,本文采用了一种基于IEMD-KW-Ens(改进的经验模态分解-克鲁斯卡尔-沃利斯-集成分类器)技术的混合模型。这里提出基于IEMD的技术,通过添加带有中值滤波器的改进筛选停止准则来解释EEG信号,以获得用于进一步处理的最优分解EEG信号。提取时间、频率和非线性独特特征的混合特征来构建特征向量。之后,我们使用KW检验进行特征选择,以从特征集中去除无关紧要的特征。随后,针对DEAP和DREAMER数据集,在三维模型中对情绪进行分类,分为两类,即基于机器学习的RUSBoosted树和基于深度学习的卷积神经网络(CNN),并对效价、唤醒和优势类别评估结果。研究结果表明,该混合模型能够成功地对多通道EEG信号中的情绪进行分类。该分解方法对于提高模型在情感计算中的效用也具有指导意义。