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Classification of drowsy and controlled EEG signals

机译:昏昏欲睡和控制性脑电信号的分类

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Electroencephalogram (EEG) signal analysis provides ground for evaluation of various neurological disorders and implementation of Brain Computer Interface (BCI) for such neurological disabilities. These capabilities of BCI system enable patients suffering from severe motor disability to control variety of applications by simply generating commands using BCI channel like, brain controlled arm or wheel chair. Successful realization of an efficient Brain Computer Interface depends upon accuracy maintained during EEG signals recording, processing, feature extraction and classification. The patients with more alcoholic medicines are seems to be drowsy. In that case, it is very difficult to extract and classify the brain signals accurately. In this work, a comparative study of EEG signals, recorded during drowsiness condition and controlled condition for same mental task, is performed for successful implementation of a BCI system. For classifying between recorded EEG signals for both situations, Fast Fourier Transform (FFT) and Power Spectral Density (PSD) are calculated. Comparison between FFTs and PSDs of EEG signals for both mental conditions shows clear difference between two mental conditions.
机译:脑电图(EEG)信号分析为评估各种神经系统疾病和实施针对此类神经系统障碍的脑计算机接口(BCI)提供了基础。 BCI系统的这些功能使患有严重运动障碍的患者能够通过使用BCI通道(例如,大脑控制的手臂或轮椅)简单地生成命令来控制各种应用。成功实现有效的脑部计算机接口取决于脑电信号记录,处理,特征提取和分类过程中保持的准确性。服用更多酒精药物的患者似乎昏昏欲睡。在这种情况下,很难准确地提取和分类大脑信号。在这项工作中,为了成功实施BCI系统,对在嗜睡状态和相同精神任务的受控状态下记录的EEG信号进行了比较研究。为了在两种情况下在记录的脑电信号之间进行分类,计算了快速傅里叶变换(FFT)和功率谱密度(PSD)。对于两种精神状况,EEG信号的FFT和PSD的比较表明,两种精神状况之间存在明显差异。

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