基于线性核PCA和XGBoost的脑电情感识别

Q3 Engineering 光电工程 Pub Date : 2021-02-26 DOI:10.12086/OEE.2021.200013
Dong Yindong, R. Fuji, Liu Chunbin
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引用次数: 1

摘要

引入线性核函数的主成分分析和XGBoost模型,设计了连续视听刺激下四种情绪状态的脑电分类算法。为了体现普适性,采用传统的功率谱密度(PSD)作为脑电信号的特征,利用XGBoost学习得到权指标下的特征重要性测度。然后利用线性核主成分分析对阈值选择的特征进行处理,并将其发送给XGBoost模型进行识别。实验分析表明,在XGBoost模型识别中,伽马波段比其他波段发挥更重要的作用;此外,对于通道的分布,中央、顶叶和右枕区比其他脑区起更重要的作用。在受试者全参与(SAP)和受试者单依赖(SSD)两种识别方案下,该算法的识别准确率分别为78.4%和92.6%。与其他文献相比,该算法有了很大的改进。该方案有助于提高脑机情感系统在视听刺激下的识别性能。
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EEG emotion recognition based on linear kernel PCA and XGBoost
The principal component analysis of linear kernel and XGBoost models are introduced to design electro-encephalogram (EEG) classification algorithm of four emotional states under continuous audio-visual stimulation. In order to reflect universality, the traditional power spectral density (PSD) is used as the feature of EEG signal, and the feature importance measure under the weight index is obtained with XGBoost learning. Then linear kernel principal component analysis is used to process the threshold selected features and send them to XGBoost model for recognition. According to the experimental analysis, gamma-band plays a more important role than other bands in XGBoost model recognition; in addition, for distribution on channels, the central, parietal, and right occipital regions play a more important role than other brain regions. The recognition accuracy of this algorithm is 78.4% and 92.6% respectively under the two recognition schemes of subjects all participation (SAP) and subject single dependent (SSD). Compared with other literature, this algorithm has made a great improvement. The scheme proposed is helpful to improve the recognition performance of brain-computer emotion system under audio-visual stimulation.
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光电工程
光电工程 Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
0.00%
发文量
6622
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