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Classification of Epileptic EEG Signals with Stacked Sparse Autoencoder Based on Deep Learning

机译:基于深度学习的堆叠式稀疏自动编码器对癫痫性脑电信号的分类

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Automatic detection of epileptic seizure plays an important role in the diagnosis of epilepsy for it can obtain invisible information of epileptic electroencephalogram (EEG) signals exactly and reduce the heavy burdens of doctors efficiently. Current automatic detection technologies are almost shallow learning models that are insufficient to learn the complex and non-stationary epileptic EEG signals. Moreover, most of their feature extraction or feature selection methods are supervised and depend on domain-specific expertise. To solve these problems, we proposed a novel framework for the automatic detection of epileptic EEG by using stacked sparse autoencoder (SSAE) with a softmax classifier. The proposed framework firstly learns the sparse and high level representations from the preprocessed data via SSAE, and then send these representations into softmax classifier for training and classification. To verify the performance of this framework, we adopted the epileptic EEG datasets to conduct experiments. The simulation results with an average accuracy of 96 % illustrated the effectiveness of the proposed framework.
机译:癫痫发作的自动检测在癫痫的诊断中起着重要的作用,因为它可以准确地获得癫痫脑电图(EEG)信号的不可见信息,并有效地减轻了医生的沉重负担。当前的自动检测技术几乎是浅层的学习模型,不足以学习复杂且不稳定的癫痫性脑电信号。此外,它们的大多数特征提取或特征选择方法都受到监督,并取决于特定领域的专业知识。为了解决这些问题,我们提出了一种新颖的框架,该框架通过使用带有softmax分类器的堆叠式稀疏自动编码器(SSAE)自动检测癫痫性脑电图。所提出的框架首先通过SSAE从预处理数据中学习稀疏和高级表示,然后将这些表示发送到softmax分类器中进行训练和分类。为了验证该框架的性能,我们采用了癫痫性脑电数据集进行实验。仿真结果的平均准确度为96%,说明了所提出框架的有效性。

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