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Classification of Both Seizure and Non-Seizure Based on EEG Signals Using Hidden Markov Model

机译:基于隐马尔可夫模型的脑电信号癫痫发作和非癫痫发作分类

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In this paper, we propose a novel feature extraction method, a slope of counting wavelet coefficients over various thresholds (SCOT) method based hidden markov model (HMM) for seizure detection. The purpose of the proposed method is to aid in the diagnosis of epilepsy, which requires long-term electroencephalography (EEG) monitoring. The interpretation of long-term EEG monitoring takes a lot of time and requires the assistance of experienced experts. In order to overcome these limitations, it is important to apply the optimized feature extraction algorithm to the seizure detection system. The proposed SCOT method based HMM has a robust detection accuracy, and a short feature extraction time; whereas the existing methods require a large amount of training data and a long feature extraction time for learning the seizure detection model. Experimental result shows that with the proposed method, the average detection accuracies are 96.5% and 98.4% using the HMM in seizure and non-seizure, respectively. In addition, the proposed method has robust detection performance regardless of the given window sizes (0.15, 0.25, 0.5, 1, and 2 seconds) are used.
机译:在本文中,我们提出了一种新颖的特征提取方法,即基于隐马尔可夫模型(HMM)的癫痫发作检测中的各种阈值上的小波系数计数斜率(SCOT)。所提出的方法的目的是帮助诊断癫痫,这需要长期的脑电图(EEG)监测。长期脑电图监测的解释需要花费大量时间,并且需要经验丰富的专家的协助。为了克服这些限制,将优化的特征提取算法应用于癫痫发作检测系统很重要。所提出的基于HMM的SCOT方法具有鲁棒的检测精度,并且特征提取时间短。现有的方法需要大量的训练数据和较长的特征提取时间来学习癫痫发作检测模型。实验结果表明,该方法在癫痫发作和非癫痫发作中的平均检出率分别为96.5%和98.4%。此外,无论使用给定的窗口大小(0.15、0.25、0.5、1和2秒),所提出的方法都具有鲁棒的检测性能。

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