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首页> 外文期刊>Information Sciences: An International Journal >Intelligent system for drowsiness recognition based on ear canal electroencephalography with photoplethysmography and electrocardiography
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Intelligent system for drowsiness recognition based on ear canal electroencephalography with photoplethysmography and electrocardiography

机译:基于耳道脑电图与光学读物动脉造影和心电图的智能系统

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摘要

We propose an intelligent system that can recognize drowsiness during daily life with the use of EEG measurements in the ear canal in combination with conventional photoplethys-mography (PPG) and electrocardiography (ECG). The physiological signals for classification by machine learning were measured during the sustained attention task of simulated driving. The features were sorted by their degree of importance using three types of ranking filters and the combined information. The effect of the feature size of the biological signals on machine learning was evaluated by determining the mean squared error. The classifications were conducted with various datasets and dataset lengths that were obtained from the same biological signals considering the transitional traits of drowsiness. The statistical measures of the performance of the classifications using machine learning indicated that the system based on the ear canal EEG data and the physiological attribute data was excellent. The feature selection process with the composite ranking algorithm using multiple ranking methods improved the classification performance. The nonlinear features were highly selective among the physiological attributes for the intelligent recognition of drowsiness. (C) 2018 Elsevier Inc. All rights reserved.
机译:我们提出了一种智能系统,可以在日常生活中识别令人困难的系统,并在耳道中与常规的光电子 - 监测仪(PPG)和心电图(ECG)组合使用EEG测量。在模拟驾驶的持续注意任务期间测量了通过机器学习进行分类的生理信号。使用三种类型的排名过滤器和组合信息,通过其重要性和组合信息来分类。通过确定平均平方误差来评估生物信号的特征大小对机器学习的影响。考虑到嗜睡的过渡性状,通过各种数据集和数据集长度进行了分类和数据集长度。使用机器学习的分类性能的统计措施表明,基于耳道EEG数据和生理属性数据的系统非常出色。具有多个排名方法的复合排名算法的特征选择过程提高了分类性能。非线性特征在智能识别嗜睡的生理属性中是高度选择性的。 (c)2018年Elsevier Inc.保留所有权利。

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