基于脑电信号的内隐意图主体独立分类

Sang-Hoon Oh
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引用次数: 1

摘要

脑机接口(BCI)通常侧重于对人类明确表达的意图进行分类。相比之下,应该考虑隐性意图来开发更智能的系统。然而,内隐意图的分类难度大于外显意图,且主体独立分类难度严重增加。本文研究了基于脑电图信号的内隐意图主体独立分类问题。在众多机器学习模型中,我们采用径向基核函数支持向量机(SVM)对脑电信号进行分类。从30个电极提取EEG信号的gamma, beta, alpha和theta波段功率后评估Fisher分数。由于判别性越强的特征具有越大的Fisher分数值,因此基于Fisher分数将脑电信号的频带功率提供给支持向量机。通过1-out - of-9的验证训练SVM, gamma和theta分量的最佳分类准确率约为65%。
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Subject Independent Classification of Implicit Intention Based on EEG Signals
Brain computer interfaces (BCI) usually have focused on classifying the explicitly-expressed intentions of humans. In contrast, implicit intentions should be considered to develop more intelligent systems. However, classifying implicit intention is more difficult than explicit intentions, and the difficulty severely increases for subject independent classification. In this paper, we address the subject independent classification of implicit intention based on electroencephalography (EEG) signals. Among many machine learning models, we use the support vector machine (SVM) with radial basis kernel functions to classify the EEG signals. The Fisher scores are evaluated after extracting the gamma, beta, alpha and theta band powers of the EEG signals from thirty electrodes. Since a more discriminant feature has a larger Fisher score value, the band powers of the EEG signals are presented to SVM based on the Fisher score. By training the SVM with 1-out of-9 validation, the best classification accuracy is approximately 65% with gamma and theta components.
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