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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Epileptic Seizure Recognition Using Reduced Deep Convolutional Stack Autoencoder and Improved Kernel RVFLN From EEG Signals
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Epileptic Seizure Recognition Using Reduced Deep Convolutional Stack Autoencoder and Improved Kernel RVFLN From EEG Signals

机译:癫痫癫痫发作识别使用减少的深卷积堆栈自动化器和EEG信号的改进内核RVFLN

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摘要

In this paper, reduced deep convolutional stack autoencoder (RDCSAE) and improved kernel random vector functional link network (IKRVFLN) are combined to recognize the epileptic seizure using both the multichannel scalp and single-channel electroencephalogram (EEG) signals. The novel RDCSAE structure is designed to extract the most discriminative unsupervised features from EEG signals and fed into the proposed supervised IKRVFLN classifier to train efficiently by reducing the mean-square error cost function for recognizing the epileptic seizure activity with promising accuracy. The proposed RDCSAE-IKRVFLN algorithm is tested over the benchmark Boston Children's Hospital multichannel scalp EEG (sEEG) and Boon University, Germany single-channel EEG databases. The less computational complexity, higher learning speed, better model generalization, accurate epileptic seizure recognition, remarkable classification accuracy, negligible false positive rate per hour (FPR/h) and short event recognition time are the main advantages of the proposed RDCSAE-IKRVFLN method over reduced deep convolutional neural network (RDCNN), RDCSAE and RDCSAE-KRVFLN methods. The proposed RDCSAE-IKRVFLN method is implemented in a high-speed reconfigurable field-programmable gate array (FPGA) hardware environment to design a computer-aided-diagnosis (CAD) system for automatic epileptic seizure diagnosis. The simplicity, feasibility, and practicability of the proposed method validate the stable and reliable performances of epilepsy detection and recognition.
机译:在本文中,组合了减少的深度卷积堆栈AutoEncoder(RDCSAE)和改进的内核随机向量功能链路网络(IKRVFLN)以使用多通道头皮和单通道脑电图(EEG)信号识别癫痫发作。新颖的RDCSAE结构旨在从EEG信号中提取最判别的无监督特征,并通过减少具有有希望的精度识别癫痫癫痫发作活动的平均方形误差成本函数来提取所提出的监督IKRVFLN分类器以有效地训练。拟议的RDCSAE-IKRVFLN算法测试在基准波士顿儿童医院Multichannel Scalp EEG(Seeg)和Boon大学,德国单通道EEG数据库。计算复杂性较少,学习速度较高,更好的模型泛化,准确的癫痫发作识别,显着的分类精度,每小时忽略的假阳性率(FPR / H)和短的事件识别时间是所提出的RDCSAE-IKRVFLN方法的主要优势减少深卷积神经网络(RDCNN),RDCSAE和RDCSAE-KRVFLN方法。所提出的RDCSAE-IKRVFLN方法是在高速可重构现场可编程门阵列(FPGA)硬件环境中实现,以设计用于自动癫痫癫痫发作诊断的计算机辅助诊断(CAD)系统。所提出的方法的简单性,可行性和实用性验证了癫痫检测和识别的稳定且可靠的性能。

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