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Smart phone application development for monitoring epilepsy seizure detection based on EEG signal classification

机译:基于脑电信号分类的癫痫发作检测智能手机应用开发

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Automated epilepsy seizure detection is the solution to the limitation and time consuming of manual epilepsy monitoring and detection using EEG signals. In this paper we developed a technique for epilepsy seizure detection using EEG signals. The signal will be pre-processed and filtered using multiple filters. Then, the filtered signal will be decomposed into sub-bands. Furthermore, feature extraction is applied; we developed a combined feature consists of combining three features into one. Finally, we used well-known classifiers such as Support Vector Machine (SVM), Artificial Neural Network (ANN), and K-Nears Neighbor (KNN) to differentiate between epileptic and non-epileptic signals, and we achieved an accuracy of 97%. Furthermore, we developed an Android-based smartphone application for monitoring epilepsy detection based on the classification results of the EEG signal. A notification will be sent to the patient, doctors, and family members when an epilepsy seizure occurs. Once the EEG signal is classified as epileptic, the App will display a visual notification indicating that Epileptic Seizure has been detected. Moreover, it will trigger an alarm and send a message notification to all associated phone numbers, and the EEG signal will display on the App. Although we are using an EEG signal from a dataset, we have generated both normal and epileptic EEG signals using a waveform generator, and we have displayed those signals on the spectrum analyzer for future real time detection using our Android App.
机译:自动化癫痫发作检测是解决手动癫痫监测和使用EEG信号检测的局限性和耗时的解决方案。在本文中,我们开发了一种使用EEG信号进行癫痫发作检测的技术。信号将被预处理并使用多个滤波器进行滤波。然后,滤波后的信号将分解为子带。此外,应用了特征提取。我们开发了一种组合功能,其中包括将三个功能组合为一个功能。最后,我们使用了支持向量机(SVM),人工神经网络(ANN)和K-Nears Neighbor(KNN)等著名的分类器来区分癫痫和非癫痫信号,我们的准确性达到了97% 。此外,我们基于EEG信号的分类结果开发了基于Android的智能手机应用程序,用于监控癫痫病的检测。发生癫痫发作时,将向患者,医生和家人发送通知。一旦将EEG信号分类为癫痫病,应用程序将显示视觉通知,表明已检测到癫痫发作。此外,它将触发警报并向所有关联的电话号码发送消息通知,并且EEG信号将显示在应用程序上。尽管我们使用的是来自数据集的EEG信号,但我们已经使用波形发生器生成了正常的和癫痫的EEG信号,并且已将这些信号显示在频谱分析仪上,以便将来使用Android App进行实时检测。

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