基于图像的脑电信号处理在驾驶疲劳预测中的应用

E. Cheng, Ku-Young Young, Chin-Teng Lin
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引用次数: 11

摘要

本研究提出了一种基于脑电图的预测系统,该系统将测量的脑电图记录转换为类似图像的数据,用于估计驾驶员的困倦程度。疲劳驾驶是导致交通事故发生的主要因素之一。由于驾驶员本身可能并不总是立即意识到自己处于困倦状态,当驾驶员处于低警觉性状态时,发生交通事故的风险就会增加。为了解决这一问题,基于脑机接口(BCI)的疲劳驾驶状态估计成为驾驶安全领域的研究热点。本研究将测量到的脑电图记录转换成类图像特征映射,然后将这些特征映射传递给卷积神经网络(CNN)学习判别表征。提出的嗜睡预测系统通过留一受试者的交叉验证进行评估。结果表明,我们的方法在没有去除伪影的情况下,对EEG数据集提供了令人印象深刻的鲁棒性预测性能。
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Image-based EEG signal processing for driving fatigue prediction
This study proposes a EEG-based prediction system that transform the measured EEG record into an image-liked data for estimating the drowsiness level of drivers. Drowsy driving is one of the main factors to the occurrence of traffic accident. Since drivers themselves may not always immediately recognize that they are in the drowsy state, the risk of traffic accident increases while the driver is in the low vigilance state. In order to address this problem, the estimation of drowsy driving state via brain-computer interfaces (BCI) becomes a major concern in the driving safety field. This study transforms the measured EEG record into a image-liked feature maps, and then passes these feature maps to a Convolutional Neural Network (CNN) to learn the discriminative representations. The proposed drowsiness prediction system is evaluated by leave-one-subject-out cross-validation. The results indicate that our approach provides impressive and robust prediction performance on the EEG dataset without artifact removal process.
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