Aldawsari Haya, Al-Ahmadi Saad, Muhammad Farah
Department of Computer Science, College of Arts and Science, Prince Sattam bin Abdulaziz University, Al-Kharj 16278, Saudi Arabia.
Center of Excellence in Information Assurance (CoEIA), King Saud University, Riyadh 11543, Saudi Arabia.
Diagnostics (Basel). 2023 Aug 8;13(16):2624. doi: 10.3390/diagnostics13162624.
EEG-based emotion recognition has numerous real-world applications in fields such as affective computing, human-computer interaction, and mental health monitoring. This offers the potential for developing IOT-based, emotion-aware systems and personalized interventions using real-time EEG data. This study focused on unique EEG channel selection and feature selection methods to remove unnecessary data from high-quality features. This helped improve the overall efficiency of a deep learning model in terms of memory, time, and accuracy. Moreover, this work utilized a lightweight deep learning method, specifically one-dimensional convolutional neural networks (1D-CNN), to analyze EEG signals and classify emotional states. By capturing intricate patterns and relationships within the data, the 1D-CNN model accurately distinguished between emotional states (HV/LV and HA/LA). Moreover, an efficient method for data augmentation was used to increase the sample size and observe the performance deep learning model using additional data. The study conducted EEG-based emotion recognition tests on SEED, DEAP, and MAHNOB-HCI datasets. Consequently, this approach achieved mean accuracies of 97.6, 95.3, and 89.0 on MAHNOB-HCI, SEED, and DEAP datasets, respectively. The results have demonstrated significant potential for the implementation of a cost-effective IoT device to collect EEG signals, thereby enhancing the feasibility and applicability of the data.
基于脑电图(EEG)的情绪识别在情感计算、人机交互和心理健康监测等领域有着众多现实世界的应用。这为利用实时EEG数据开发基于物联网(IoT)的、具备情绪感知能力的系统以及个性化干预措施提供了潜力。本研究聚焦于独特的EEG通道选择和特征选择方法,以从高质量特征中去除不必要的数据。这有助于在内存、时间和准确性方面提高深度学习模型的整体效率。此外,这项工作采用了一种轻量级深度学习方法,即一维卷积神经网络(1D-CNN),来分析EEG信号并对情绪状态进行分类。通过捕捉数据中的复杂模式和关系,1D-CNN模型准确地区分了情绪状态(高唤醒/低唤醒和高愉悦度/低愉悦度)。此外,还使用了一种有效的数据增强方法来增加样本量,并使用额外的数据观察深度学习模型的性能。该研究在SEED、DEAP和MAHNOB-HCI数据集上进行了基于EEG的情绪识别测试。因此,这种方法在MAHNOB-HCI、SEED和DEAP数据集上分别实现了97.6%、95.3%和89.0%的平均准确率。结果表明,实施一种经济高效的物联网设备来收集EEG信号具有巨大潜力,从而提高了数据的可行性和适用性。