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EEG-Based Drivers' Drowsiness Monitoring Using a Hierarchical Gaussian Mixture Model

机译:基于分层高斯混合模型的基于EEG的驾驶员嗜睡监测

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摘要

We developed an EEG-based probabilistic model, which effectively predicts drowsiness levels of thirty-two subjects involved in a moving base driving simulator experiment. A hierarchical Gaussian mixture model (hGMM) with two mixture components at the lower hierarchical level is used. Each mixture models data density distribution of one of the two drowsiness cornerstones/classes represented by 4-second long EEG segments with low and high drowsiness levels. We transfer spectral contents of each EEG segment into a compact form of autoregressive model coefficients. The Karolinska drowsiness scoring method is used to initially label data belonging to individual classes. We demonstrate good agreement between Karolinska drowsiness scores and the predicted drowsiness, when the hGMM is applied to continuously monitor drowsiness over the time-course of driving sessions. The computations associated with the approach are fast enough to build up a practical real-time drowsiness monitoring system.
机译:我们开发了基于脑电图的概率模型,该模型可有效预测参与移动基地驾驶模拟器实验的32位受试者的睡意程度。使用了分层的高斯混合模型(hGMM),该模型在较低的分层级别具有两个混合分量。每种混合物都对两个嗜睡基​​石/类别之一的数据密度分布进行建模,这些嗜睡基石/类别由具有低和嗜睡等级的4秒长EEG段代表。我们将每个EEG段的频谱内容转换为自回归模型系数的紧凑形式。 Karolinska睡意评分方法用于最初标记属于各个类别的数据。当将hGMM应用于在驾驶时间段内持续监控睡意时,我们证明了Karolinska睡意分数与预期睡意之间的良好一致性。与该方法相关的计算速度足够快,可以建立一个实用的实时睡意监测系统。

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