新的erp空间谱特征增强脑机接口

B. Abibullaev, Yerzhan Orazayev, A. Zollanvari
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引用次数: 1

摘要

构建准确的事件相关电位预测模型是获得鲁棒脑机接口(BCI)系统的关键一步。在这方面,以往的研究大多采用erp的时空特征进行分类。最近,我们发现ERP信号的空间谱特征在预测用户心理意图方面也具有显著的区别效应。在本研究中,我们比较了脑电图信号的时空特征和空间谱特征的区别效应。通过将ERP信号建模为具有未知振幅、频率和相位的正弦波的和来提取频谱特征。时间特征是ERP波形随时间变化的幅度。采用L2-Ridge惩罚的逻辑回归作为分类规则。我们之所以选择这个分类器,是因为我们最近展示了它可以利用空间光谱特征实现高性能。我们观察到,通常直接使用时间特征而不是提取光谱特征可以获得更高的分类性能。
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Novel Spatiospectral Features of ERPs Enhances Brain-Computer Interfaces
Constructing accurate predictive models for the detection of event-related potentials (ERPs) is a crucial step to obtain robust Brain-Computer Interface (BCI) systems. In this regard, the majority of previous studies have used spatiotemporal features of ERPs for classification. Recently, we showed that the spatiospectral features of ERP signals also contain significant discriminatory effects in predicting users’ mental intent. In this study, we compare the discriminatory effect of spatiospectral features and spatiotemporal features of electroencephalographic signals. Spectral features are extracted by modeling ERP signals as a sum of sinusoids with unknown amplitudes, frequencies, and phases. Temporal features are the magnitude of ERP waveforms across time. As the classification rule Logistic Regression with L2-Ridge penalty (LRR) is used. We chose this classifier as we recently showed it could achieve high performance using spatiospectral features. We observe that generally by directly using temporal features rather than extracted spectral features even a higher classification performance is achieved.
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