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Driver Fatigue Detection Through Chaotic Entropy Analysis of Cortical Sources Obtained From Scalp EEG Signals

机译:通过从头皮脑电信号获得的皮质源的混沌熵分析来检测驾驶员疲劳

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In this paper, the focus is on the analysis of a scalp electroencephalography (EEG) database of human subjects using the electrophysiological source imaging or source localization and the classification of normal and sleep-deprived states. The EEG collection was carried out while the subjects were driving in simulated condition in a laboratory, where the fatigue level propagates through 11 different stages of fatigue, to achieve the sleep deprivation of a total period of 36 h. Standardized low-resolution brain electromagnetic tomography (sLORETA) algorithm has been used here for estimating the source activations on the surface of the neo-cortex. sLORETA transforms the surface or scalp EEG data to the corresponding corticular dipole sources at each voxel on a simulated neo-cortex. For the characterization of the underlying neural patterns, approximate and sample entropies in voxels nearest to specific electrodes for different subjects and varying fatigue levels have been computed. Approximate entropy, sample entropy, and modified sample entropy are used here as the measures of complexity, similarity, and regularity in the sources. As a further investigation, these measures computed over all the stages are used to train a support vector machine, which classifies the measured values between alert and extremely fatigued states. As a result, several observations on the nature of change of the chaotic entropies are provided, and up to 86 classification accuracy is obtained.
机译:在本文中,重点是使用电生理源成像或源定位以及正常状态和睡眠剥夺状态的分类对人类受试者的头皮脑电图(EEG)数据库进行分析。脑电图采集是在受试者在模拟条件下的实验室中行驶时进行的,疲劳水平会通过11个不同的疲劳阶段传播,以使整个睡眠时间减少36小时。标准化的低分辨率脑电磁层析成像(sLORETA)算法已在此处用于估计新皮层表面上的源激活。 sLORETA将表面或头皮EEG数据转换为模拟新皮层上每个体素上的相应皮质偶极子源。为了表征潜在的神经模式,已针对不同对象和变化的疲劳水平计算了最接近特定电极的体素中的近似熵和样本熵。近似熵,样本熵和修改后的样本熵在此处用作度量源中的复杂性,相似性和规则性。作为进一步的研究,将在所有阶段计算出的这些度量用于训练支持向量机,该向量机将警报和极端疲劳状态之间的测量值分类。结果,提供了关于混沌熵的变化性质的若干观察,并且获得了高达86个分类精度。

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