Support Vector Machine Based Detection of Drowsiness Using Minimum EEG Features

Shaoda Yu, Peng Li, H. Lin, E. Rohani, G. Choi, B. Shao, Qian Wang
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引用次数: 38

Abstract

Drowsiness presents major safety concerns for tasks that require long periods of focus and alertness. While there is a body of work on drowsiness detection using EEG signals in neuroscience and engineering, there exist unanswered questions pertaining to the best mechanisms to use for detecting drowsiness. Targeting a range of practical safety-awareness applications, this study adopts a machine learning based approach to build support vector machine (SVM) classifiers to distinguish between awake and drowsy states. While broadband alpha, beta, delta, and theta waves are often used as features in the existing work, lack of widely agreed precise definitions of such broadband signals and difficulty in accounting for interpersonal variability has led to poor classification performance as demonstrated in this study. Furthermore, the transition from wakefulness to drowsiness and deeper sleep stages is a complex multifaceted process. The richness of this process calls for inclusion of sub-band features for more accurate drowsiness detection. To shed light on the effectiveness of sub-banding, we quantitatively compare the performances of a large set of SVM classifiers trained upon a varying number of 1Hz sub band features. More importantly, we identify a compact set of neuroscientifcally motivated EEG features and demonstrate that the resulting classifier not only outperforms traditional broadband based classifiers but also is on a par with or superior than the best sub-band classifiers found by thorough search in a large space of 1Hz sub band features.
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基于支持向量机的最小EEG特征睡意检测
在需要长时间集中注意力和保持警觉的任务中,困倦是主要的安全问题。虽然在神经科学和工程学中有大量利用脑电图信号检测睡意的工作,但关于检测睡意的最佳机制仍存在未解决的问题。针对一系列实际的安全意识应用,本研究采用基于机器学习的方法构建支持向量机(SVM)分类器来区分清醒和困倦状态。虽然宽带α、β、δ和θ波在现有工作中经常被用作特征,但缺乏广泛同意的此类宽带信号的精确定义以及难以考虑人际变异性导致分类性能差,如本研究所示。此外,从清醒到困倦和深度睡眠阶段的过渡是一个复杂的多方面的过程。这一过程的丰富性要求包含子带特征,以便更准确地检测困倦。为了阐明子带的有效性,我们定量地比较了在不同数量的1Hz子带特征上训练的大量SVM分类器的性能。更重要的是,我们识别了一组紧凑的神经科学驱动的EEG特征,并证明了所得到的分类器不仅优于传统的基于宽带的分类器,而且与通过在1Hz子带特征的大空间中彻底搜索找到的最佳子带分类器相当或优于。
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