Bio-Intelligence & Data Mining Laboratory, School of Electronic and Electrical Engineering, Kyungpook National University, Daegu 41566, Korea.
Sensors (Basel). 2021 Mar 30;21(7):2381. doi: 10.3390/s21072381.
Mental stress can lead to traffic accidents by reducing a driver's concentration or increasing fatigue while driving. In recent years, demand for methods to detect drivers' stress in advance to prevent dangerous situations increased. Thus, we propose a novel method for detecting driving stress using nonlinear representations of short-term (30 s or less) physiological signals for multimodal convolutional neural networks (CNNs). Specifically, from hand/foot galvanic skin response (HGSR, FGSR) and heart rate (HR) short-term input signals, first, we generate corresponding two-dimensional nonlinear representations called continuous recurrence plots (Cont-RPs). Second, from the Cont-RPs, we use multimodal CNNs to automatically extract FGSR, HGSR, and HR signal representative features that can effectively differentiate between stressed and relaxed states. Lastly, we concatenate the three extracted features into one integrated representation vector, which we feed to a fully connected layer to perform classification. For the evaluation, we use a public stress dataset collected from actual driving environments. Experimental results show that the proposed method demonstrates superior performance for 30-s signals, with an overall accuracy of 95.67%, an approximately 2.5-3% improvement compared with that of previous works. Additionally, for 10-s signals, the proposed method achieves 92.33% classification accuracy, which is similar to or better than the performance of other methods using long-term signals (over 100 s).
精神压力会导致驾驶员在驾驶时注意力不集中或疲劳,从而导致交通事故。近年来,人们对提前检测驾驶员压力以防止危险情况的需求增加。因此,我们提出了一种使用多模态卷积神经网络(CNN)对短期(30 秒或更短)生理信号进行非线性表示来检测驾驶压力的新方法。具体来说,从手部/脚部皮肤电导反应(HGSR,FGSR)和心率(HR)的短期输入信号中,首先,我们生成相应的二维非线性表示,称为连续递归图(Cont-RPs)。其次,从 Cont-RPs 中,我们使用多模态 CNN 自动提取 FGSR、HGSR 和 HR 信号的代表性特征,这些特征可以有效地区分压力和放松状态。最后,我们将三个提取的特征串联成一个集成表示向量,并将其输入全连接层进行分类。为了评估,我们使用从实际驾驶环境中收集的公共压力数据集。实验结果表明,该方法在 30 秒信号下表现出优异的性能,整体准确率为 95.67%,比以前的工作提高了约 2.5-3%。此外,对于 10 秒信号,该方法的分类准确率达到 92.33%,与使用长期信号(超过 100 秒)的其他方法的性能相似或更好。