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An efficient automated technique for epilepsy seizure detection using EEG signals

机译:使用脑电信号检测癫痫发作的有效自动化技术

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Epilepsy is a neurological disorder characterized by epileptic seizures. Epileptic seizure can be analyzed through the normal and abnormal activity of the brain. This abnormal activity can be observed only through the use of an efficient algorithm. The process of an efficient algorithm always uses signal processing in which an epileptic signal can be considered as an input signal. This paper introduces a technique to detect epileptic signal and to compare the characteristics of the brain signals at different stages. Our algorithm is based on signal processing techniques to detect epilepsy in the EEG signal. The signal processing starts with sampling the signal at 178.6 Hz so that the signal operating frequency follows oversampling criteria. The sampled signal is given to the designed filter so that the unwanted noise can be removed and the signal is ready to be decomposed. Then, the signal is decomposed at five different signal levels so that its frequency spectrum is reduced to less than 200 Hz using different wavelet filters at each level. In the feature extraction, we have used signal features rather than statistical features so that we can still rely on time domain and frequency domain features for an EEG signal. These features are classified using Support Vector Machine (SVM), K-Nearest Neighbor (KNN) and Artificial Neural Networks (ANN) to detect the epilepsy in the EEG signal. The results were demonstrated for different sets of brain signal that show the normal behavior of the brain signals and epileptic behavior of the signal with seizure. A comparison of our work with the present traditional methodologies proves that our algorithm is more efficient in detecting epilepsy.
机译:癫痫病是一种以癫痫发作为特征的神经系统疾病。癫痫发作可以通过大脑的正常和异常活动来分析。只有通过使用有效的算法,才能观察到这种异常活动。有效算法的过程始终使用信号处理,其中癫痫信号可以被视为输入信号。本文介绍了一种检测癫痫信号并比较不同阶段大脑信号特征的技术。我们的算法基于信号处理技术来检测EEG信号中的癫痫病。信号处理开始于以178.6 Hz的频率对信号进行采样,以使信号工作频率遵循过采样标准。采样的信号被提供给设计的滤波器,以便可以去除不想要的噪声,并且可以将信号分解。然后,将信号分解为五个不同的信号级别,以便在每个级别使用不同的小波滤波器将其频谱降低到小于200 Hz。在特征提取中,我们使用了信号特征而不是统计特征,因此我们仍然可以依赖于时域和频域特征来生成EEG信号。使用支持向量机(SVM),K最近邻(KNN)和人工神经网络(ANN)对这些功能进行分类,以检测EEG信号中的癫痫病。结果针对不同组的脑信号进行了证明,这些结果显示了脑信号的正常行为和癫痫发作信号的癫痫行为。将我们的工作与目前的传统方法进行比较,证明我们的算法在检测癫痫病方面更为有效。

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