Drowsiness reduces concentration and increases response time, which causes fatal road accidents. Monitoring drivers' drowsiness levels by electroencephalogram (EEG) and taking action may prevent road accidents. EEG signals effectively monitor the driver's mental state as they can monitor brain dynamics. However, calibration is required in advance because EEG signals vary between and within subjects. Because of the inconvenience, calibration has reduced the accessibility of the brain-computer interface (BCI). Developing a generalized classification model is similar to domain generalization, which overcomes the domain shift problem. Especially data augmentation is frequently used. This paper proposes a calibration-free framework for driver drowsiness state classification using manifold-level augmentation. This framework increases the diversity of source domains by utilizing features. We experimented with various augmentation methods to improve the generalization performance. Based on the results of the experiments, we found that deeper models with smaller kernel sizes improved generalizability. In addition, applying an augmentation at the manifold-level resulted in an outstanding improvement. The framework demonstrated the capability for calibration-free BCI.
翻译:潜伏会降低浓度并增加反应时间,从而导致致命的交通事故。通过电脑图和采取行动监测驾驶员的沉睡水平可以防止道路事故。 EEG信号可以有效监测驾驶员的精神状态,因为他们可以监测大脑动态。然而,需要提前校准,因为 EEG信号在对象之间和对象内部各不相同。由于不便,校准减少了大脑-计算机界面(BCI)的可及性。开发一个通用分类模型类似于域级通用模型,从而克服了域变换问题。特别是经常使用数据增强。本文建议使用多级扩增功能,为驾驶员的沉睡状态分类提供一个无校准框架。这个框架利用特性增加源域的多样性。我们试验了各种增强方法来改进一般化性能。根据实验结果,我们发现使用较小内核尺寸的更深模型提高了通用性。此外,在多元级应用扩增后,还取得了出色的改进。框架展示了无校准BCI的能力。