基于脑电图的自相关句子阅读中内隐意图分类

EEG-Based Classification of Implicit Intention During Self-Relevant Sentence Reading

IEEE Transactions on Cybernetics · 2015
被引 30
ABS 3

中文导读

利用脑电图数据,通过支持向量机分类器从自相关句子阅读中区分同意与不同意两种内隐意图,最高准确率达75.5%,为理解用户未表达意图的智能界面提供可能。

Abstract

From electroencephalography (EEG) data during self-relevant sentence reading, we were able to discriminate two implicit intentions: 1) "agreement" and 2) "disagreement" to the read sentence. To improve the classification accuracy, discriminant features were selected based on Fisher score among EEG frequency bands and electrodes. Especially, the time-frequency representation with Morlet wavelet transforms showed clear differences in gamma, beta, and alpha band powers at frontocentral area, and theta band power at centroparietal area. The best classification accuracy of 75.5% was obtained by a support vector machine classifier with the gamma band features at frontocentral area. This result may enable a new intelligent user-interface which understands users' implicit intention, i.e., unexpressed or hidden intention.

脑电图机器学习自然语言处理人机交互认知神经科学