Olmez Yagmur, Koca Gonca Ozmen, Sengur Abdulkadir, Acharya U Rajendra
Department of Mechatronics Engineering, University of Firat, 23119 Elazig, Turkey.
Department of Electrical and Electronics Engineering, University of Firat, 23119 Elazig, Turkey.
Health Inf Sci Syst. 2023 May 4;11(1):22. doi: 10.1007/s13755-023-00224-z. eCollection 2023 Dec.
Recognizing emotions accurately in real life is crucial in human-computer interaction (HCI) systems. Electroencephalogram (EEG) signals have been extensively employed to identify emotions. The researchers have used several EEG-based emotion identification datasets to validate their proposed models. In this paper, we have employed a novel metaheuristic optimization approach for accurate emotion classification by applying it to select both channel and rhythm of EEG data. In this work, we have proposed the particle swarm with visit table strategy (PS-VTS) metaheuristic technique to improve the effectiveness of EEG-based human emotion identification. First, the EEG signals are denoised using a low pass filter, and then rhythm extraction is done using discrete wavelet transform (DWT). The continuous wavelet transform (CWT) approach transforms each rhythm signal into a rhythm image. The pre-trained MobilNetv2 model has been pre-trained for deep feature extraction, and a support vector machine (SVM) is used to classify the emotions. Two models are developed for optimal channels and rhythm sets. In Model 1, optimal channels are selected separately for each rhythm, and global optima are determined in the optimization process according to the best channel sets of the rhythms. The best rhythms are first determined for each channel, and then the optimal channel-rhythm set is selected in Model 2. Our proposed model obtained an accuracy of 99.2871% and 97.8571% for the classification of HA (high arousal)-LA (low arousal) and HV (high valence)-LV (low valence), respectively with the DEAP dataset. Our generated model obtained the highest classification accuracy compared to the previously reported methods.
在人机交互(HCI)系统中,在现实生活中准确识别情绪至关重要。脑电图(EEG)信号已被广泛用于识别情绪。研究人员使用了多个基于EEG的情绪识别数据集来验证他们提出的模型。在本文中,我们采用了一种新颖的元启发式优化方法,通过将其应用于选择EEG数据的通道和节律来进行准确的情绪分类。在这项工作中,我们提出了带访问表策略的粒子群算法(PS-VTS)元启发式技术,以提高基于EEG的人类情绪识别的有效性。首先,使用低通滤波器对EEG信号进行去噪,然后使用离散小波变换(DWT)进行节律提取。连续小波变换(CWT)方法将每个节律信号转换为节律图像。预训练的MobilNetv2模型已用于深度特征提取,支持向量机(SVM)用于情绪分类。针对最佳通道和节律集开发了两个模型。在模型1中,为每个节律分别选择最佳通道,并在优化过程中根据节律的最佳通道集确定全局最优值。在模型2中,首先为每个通道确定最佳节律,然后选择最佳通道-节律集。我们提出的模型在使用DEAP数据集对HA(高唤醒)-LA(低唤醒)和HV(高效价)-LV(低效价)进行分类时,准确率分别达到了99.2871%和97.8571%。与先前报道的方法相比,我们生成的模型获得了最高的分类准确率。