基于多通道脑电图的多频段多类情绪识别

Baloju Revanth, Sakshi Gupta, Prakhar Dubey, B. Choudhury, Kranti S. Kamble, Joydeep Sengupta
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引用次数: 4

摘要

基于脑电图(EEG)的情感识别使用基于机器学习(ML)的算法显示出令人鼓舞的结果。本研究比较了四种基于机器学习的分类器在不同频段对脑电信号中多类别人类情绪识别的性能。首先,将原始EEG信号分为delta、theta、alpha、beta和gamma五个频段。其次,提取统计、时域和频域特征;为了将SEED数据集中的情绪分为积极、消极和中性三类,这些特征被输入到四个基于ml的分类器中。本研究显示了基于集成ml的分类器优于传统分类器的有效性。随机森林(RF)分类器对delta波段的最高平均分类准确率为95.71%。KNN的平均准确率第二高,为80.32%。其他频段也出现了类似的趋势。总之,我们的研究证明了基于机器学习的多类别情感识别模型的价值。
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Multi-Channel EEG-based Multi-Class Emotion Recognition From Multiple Frequency Bands
Electroencephalogram (EEG)-based emotion recognition has demonstrated encouraging results using machine learning (ML)-based algorithms. This study compares the performance of different frequency bands using four ML-based classifiers for the recognition of multi-class human emotions from EEG signals. Initially, the raw EEG signals are divided into five frequency bands such as delta, theta, alpha, beta, and gamma bands. Secondly, the statistical, time and frequency domain features are extracted. To classify emotions into positive, negative and neutral classes from the SEED dataset, these features are fed to four ML-based classifiers. This study shows the efficacy of an ensemble ML-based classifier over traditional classifiers. The best highest average classification accuracy reported by the random forest (RF) classifier for the delta band is 95.71%. The second highest average accuracy was reported by KNN with 80.32% for the theta band. A similar trend was also followed by other frequency bands. In conclusion, our study demonstrated the value of the proposed ML-based model for multi-class emotion recognition.
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