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Wavelet transform based multiple features extraction for detection of epileptic/ non-epileptic multichannel EEG

机译:基于小波变换的癫痫/非癫痫多通道EEG检测的多个特征提取

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Electroencephalogram is the process of capturing spontaneous neural activity of brain by placing electrodes along the scalp. EEG plays a vital role in analyzing neuronal disorder like epilepsy. In this research work, we use wavelet transform method to extract and analyze multiple features of epileptic multichannel EEG. Instead of discrete wavelet transform or continuous wavelet transform, here we used Stationary wavelet transform to perform five level decomposition of multichannel EEG signal with sampling rate 114 Hz. The advantages of SWT are good directionality and retention of phase information in the EEG signal. Four statistical wavelet features (Max, Min, Variance and Energy) are evaluated from the wavelet coefficients of each decomposed sub-band for multichannel EEG dataset of 10 subjects. Wavelet features analysis and visual inspection shows the significant difference for epileptic and non-epileptic EEG signals. Also the affected lobe for epileptic subject is identically verified by them. Finally we cross validated the decision through wavelet feature analysis and identification of affected lobe for epileptic multichannel EEG subjects' with Neurophysician remark.
机译:脑电图是通过沿头皮置于沿着头部的电极捕获脑的自发神经活动的过程。脑电图在分析癫痫等神经元疾病方面发挥着重要作用。在这项研究工作中,我们使用小波变换方法提取和分析癫痫多声道脑电图的多种特征。而不是离散小波变换或连续小波变换,在这里我们使用了静止小波变换,以采用采样率114Hz执行五个电平分解多通道EEG信号。 SWT的优点是良好的方向性和脑电图信号中相位信息的保留。从10个受试者的多通道EEG数据集的每个分解子带的小波系数评估四个统计小波特征(MAX,MIN,差异和能量)。小波特征分析和目视检查表明癫痫和非癫痫脑电图信号的显着差异。此外,癫痫患者的受影响的叶片相同验证。最后,我们通过小波特征分析和受影响叶片的癫痫发作症的鉴定进行了验证了作出的决定。

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