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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Deep long short term memory based minimum variance kernel random vector functional link network for epileptic EEG signal classification
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Deep long short term memory based minimum variance kernel random vector functional link network for epileptic EEG signal classification

机译:基于深度短的短期内存的最小方差内核随机向量功能链路网络用于癫痫eeg信号分类

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摘要

In this paper, the efficiently extracted and reduced features using deep long short-term memory (DLSTM) of the epileptic EEG signal integrated with minimum variance kernel random vector functional link net (MVKRVFLN) classifier are used to identify the seizure and non-seizure productively. Our methodology uses Children Hospital Boston-Massachusetts Institute of Technology (CHB-MIT) multi-channel scalp EEG data, Bonn university single-channel intracranial EEG data, and two-channel Bern Barcelona intracranial EEG data recordings to assess the performance. The non-stationary, non-linear, complex, and chaotic type EEG signal is directly applied to DLSTM to obtain compressed significant features. The scatter plots of the DLSTM output features signify this compressed information are unique in nature. The excellent generalization ability, faster learning rate, simpler network-based MVKRVFLN classifier is formulated to well identify the seizure and non-seizure epochs precisely by applying the deep LSTM extracted discriminative features as input. The type of kernel function selection and choice of regularization coefficient are added information to improve the performance of the proposed approach. The suggested technique provides excellent classification accuracy, superior detection ability, faster speed, and insignificant false positive rate per hour, simpler structure, robustness to classify the seizure and non-seizure signals.
机译:在本文中,使用与最小方差内核随机矢量功能链路网(MVKRVFLN)分类器集成的癫痫eEG信号的深度长短期存储器(DLSTM)有效提取和降低的特征用于识别癫痫发作和非癫痫发作。我们的方法使用儿童医院Boston-Massachusetts理工学院(CHB-MIT)多通道头皮EEG数据,Bonn大学单通道颅内脑电图数据,以及双通道Bern巴塞罗那颅内脑电图数据记录评估性能。非静止,非线性,复杂和混沌型EEG信号直接应用于DLSTM以获得压缩的有效特征。 DLSTM输出功能的散点图表示此压缩信息本质上是唯一的。优异的泛化能力,更快的学习率,更简单的基于网络的MVKRVFLN分类器,通过应用深LSTM提取的鉴别特征作为输入,精确地识别癫痫发作和非癫痫纪元。内核功能的选择和正则化系数的选择是添加信息以提高所提出的方法的性能。建议的技术提供了出色的分类精度,卓越的检测能力,更快的速度,并且每小时微不足道的假阳性率,更简单的结构,稳健性来分类癫痫发作和非癫痫发出信号。

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