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首页> 外文期刊>Circuits and Systems II: Express Briefs, IEEE Transactions on >Epileptic State Classification by Fusing Hand-Crafted and Deep Learning EEG Features
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Epileptic State Classification by Fusing Hand-Crafted and Deep Learning EEG Features

机译:通过融合手工制作和深度学习脑电图的癫痫态分类

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摘要

Seizure onset detection and epileptic preictal prediction based on electroencephalogram (EEG) signals have been a challenge problem in the research community. In this brief, a novel epileptic states classification algorithm based on the multichannel EEGs representation using multiple hand-crafted features, the feature fusion and transfer learning (TL) with multiple pre-trained deep neural networks (DNNs), the discriminative feature extraction and epileptic state classification with a hierarchical neural network (HNN), is developed. The mean amplitude spectrum (MAS), mean power spectral density (MPSD) and wavelet packet features (WPFs) are firstly derived and fused into an image feature for multichannel EEGs representation. Then, 5 classical pre-trained DNNs are directly adopted as feature extractors on the fused image feature. A 7-layer fully-connected (FC) HNN is finally constructed for discriminative feature learning and epileptic state classification. The effectiveness is demonstrated through experiments on the CHB-MIT and the iNeuro epilepsy EEG databases.
机译:基于脑电图(EEG)信号的癫痫发作出现检测和癫痫预测是研究界的挑战问题。在此简介中,一种基于多通道EEGS表示的新型癫痫状态分类算法,使用多手制作的特征,特征融合和传送学习(TL)具有多个预先训练的深神经网络(DNN),鉴别特征提取和癫痫发作开发了具有分层神经网络(HNN)的国家分类。平均幅度频谱(MAS),平均功率谱密度(MPSD)和小波分组特征(WPFS)首先导出并融合到用于多声道EEGS表示的图像特征中。然后,在融合图像特征上直接采用5个经典预先训练的DNN。最终构建了7层完全连接(FC)HNN以用于鉴别特征学习和癫痫态分类。通过对CHB-MIT和Ineuro癫痫脑电图数据库的实验证明了有效性。

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