College of Automation, Hangzhou Dianzi University, Hangzhou, China.
College of Automation, Hangzhou Dianzi University, Hangzhou, China.
Comput Biol Med. 2022 Jul;146:105606. doi: 10.1016/j.compbiomed.2022.105606. Epub 2022 May 13.
Recently, Riemannian geometry-based pattern recognition has been widely employed to brain computer interface (BCI) researches, providing new idea for emotion recognition based on electroencephalogram (EEG) signals. Although the symmetric positive definite (SPD) matrix manifold constructed from the traditional covariance matrix contains large amount of spatial information, these methods do not perform well to classify and recognize emotions, and the high dimensionality problem still unsolved. Therefore, this paper proposes a new strategy for EEG emotion recognition utilizing Riemannian geometry with the aim of achieving better classification performance. The emotional EEG signals of 32 healthy subjects were from an open-source dataset (DEAP). The wavelet packets were first applied to extract the time-frequency features of the EEG signals, and then the features were used to construct the enhanced SPD matrix. A supervised dimensionality reduction algorithm was then designed on the Riemannian manifold to reduce the high dimensionality of the SPD matrices, gather samples of the same labels together, and separate samples of different labels as much as possible. Finally, the samples were mapped to the tangent space, and the K-nearest neighbors (KNN), Random Forest (RF) and Support Vector Machine (SVM) method were employed for classification. The proposed method achieved an average accuracy of 91.86%, 91.84% on the valence and arousal recognition tasks. Furthermore, we also obtained the superior accuracy of 86.71% on the four-class recognition task, demonstrated the superiority over state-of-the-art emotion recognition methods.
最近,基于黎曼几何的模式识别已被广泛应用于脑机接口(BCI)研究,为基于脑电图(EEG)信号的情感识别提供了新的思路。虽然基于传统协方差矩阵构建的对称正定(SPD)矩阵流形包含大量的空间信息,但这些方法在分类和识别情感方面表现不佳,且高维性问题仍未得到解决。因此,本文提出了一种基于黎曼几何的 EEG 情感识别新策略,旨在实现更好的分类性能。32 名健康受试者的情绪 EEG 信号来自于一个开源数据集(DEAP)。首先应用小波包提取 EEG 信号的时频特征,然后使用这些特征构建增强的 SPD 矩阵。然后在黎曼流形上设计了一种有监督的降维算法,以降低 SPD 矩阵的高维性,将相同标签的样本聚集在一起,并尽可能将不同标签的样本分开。最后,将样本映射到切空间,并使用 K-最近邻(KNN)、随机森林(RF)和支持向量机(SVM)方法进行分类。所提出的方法在效价和唤醒识别任务上的平均准确率分别达到了 91.86%和 91.84%。此外,我们还在四类识别任务上获得了 86.71%的优异准确率,优于现有的情感识别方法。