首页> 外文会议>2015 IEEE China Summit amp; International Conference on Signal and Information Processing >Feature extraction with deep belief networks for driver's cognitive states prediction from EEG data
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Feature extraction with deep belief networks for driver's cognitive states prediction from EEG data

机译:利用深度信念网络进行特征提取以从EEG数据预测驾驶员的认知状态

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This study considers the prediction of driver's cognitive states from electroencephalographic (EEG) data. Extracting EEG features correlated with driver's cognitive states is key for achieving accurate prediction. However, high dimensionality and temporal-and-spatial correlations of EEG data make extraction of effective features difficult. This study explores the approaches based on deep belief networks (DBN) for feature extraction and dimension reduction. Experimental results of this study showed that DBN applied to channel epochs (DBN-C) produces the most discriminant features and the best classification performance is achieved when DBN-C is applied to the time-frequency and independent-component-analysis transformed EEG data. The results suggested that DBN-C is a promising new method for extracting complex, discriminant features for EEG-based brain computer interfaces.
机译:这项研究考虑了从脑电图(EEG)数据预测驾驶员的认知状态。提取与驾驶员的认知状态相关的脑电特征是实现准确预测的关键。然而,脑电数据的高维和时空相关性使得有效特征的提取变得困难。这项研究探索了基于深度信念网络(DBN)的特征提取和降维方法。这项研究的实验结果表明,将DBN-C应用于时频和独立分量分析转换的EEG数据时,将DBN应用于通道纪元(DBN-C)会产生最大的判别特征,并且实现了最佳的分类性能。结果表明,DBN-C是一种有前途的新方法,可以为基于EEG的脑计算机接口提取复杂的判别特征。

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