Computer and Information Science Department, University of Michigan-Dearborn, Dearborn, MI 48128, USA.
Sensors (Basel). 2018 Feb 7;18(2):503. doi: 10.3390/s18020503.
One of the main reasons for fatal accidents on the road is distracted driving. The continuous attention of an individual driver is a necessity for the task of driving. While driving, certain levels of distraction can cause drivers to lose their attention, which might lead to an accident. Thus, the number of accidents can be reduced by early detection of distraction. Many studies have been conducted to automatically detect driver distraction. Although camera-based techniques have been successfully employed to characterize driver distraction, the risk of privacy violation is high. On the other hand, physiological signals have shown to be a privacy preserving and reliable indicator of driver state, while the acquisition technology might be intrusive to drivers in practical implementation. In this study, we investigate a continuous measure of phasic Galvanic Skin Responses (GSR) using a wristband wearable to identify distraction of drivers during a driving experiment on-the-road. We first decompose the raw GSR signal into its phasic and tonic components using Continuous Decomposition Analysis (CDA), and then the continuous phasic component containing relevant characteristics of the skin conductance signals is investigated for further analysis. We generated a high resolution spectro-temporal transformation of the GSR signals for non-distracted and distracted (calling and texting) scenarios to visualize the associated behavior of the decomposed phasic GSR signal in correlation with distracted scenarios. According to the spectrogram observations, we extract relevant spectral and temporal features to capture the patterns associated with the distracted scenarios at the physiological level. We then performed feature selection using support vector machine recursive feature elimination (SVM-RFE) in order to: (1) generate a rank of the distinguishing features among the subject population, and (2) create a reduced feature subset toward more efficient distraction identification on the edge at the generalization phase. We employed support vector machine (SVM) to generate the 10-fold cross validation (10-CV) identification performance measures. Our experimental results demonstrated cross-validation accuracy of 94.81% using all the features and the accuracy of 93.01% using reduced feature space. The SVM-RFE selected set of features generated a marginal decrease in accuracy while reducing the redundancy in the input feature space toward shorter response time necessary for early notification of distracted state of the driver.
道路上发生致命事故的一个主要原因是驾驶时分心。个体驾驶员的持续注意力是驾驶任务的必要条件。在驾驶过程中,一定程度的分心会导致驾驶员注意力不集中,从而导致事故发生。因此,通过早期发现分心可以减少事故的发生。已经进行了许多研究来自动检测驾驶员分心。虽然基于摄像头的技术已成功用于描述驾驶员分心,但存在侵犯隐私的风险很高。另一方面,生理信号已被证明是驾驶员状态的隐私保护和可靠指标,而在实际实施中,采集技术可能会对驾驶员造成干扰。在这项研究中,我们使用腕带式可穿戴设备研究了相位皮肤电反应 (GSR) 的连续测量,以在道路上的驾驶实验中识别驾驶员的分心。我们首先使用连续分解分析 (CDA) 将原始 GSR 信号分解为其相位和紧张成分,然后研究包含皮肤电导率信号相关特征的连续相位成分进行进一步分析。我们为无干扰和干扰(打电话和发短信)场景生成了 GSR 信号的高分辨率光谱时变转换,以可视化与干扰场景相关的分解相位 GSR 信号的相关行为。根据声谱图观察,我们提取了相关的光谱和时间特征,以在生理水平上捕获与分心场景相关的模式。然后,我们使用支持向量机递归特征消除 (SVM-RFE) 进行特征选择,以便:(1) 在受试者群体中生成区分特征的等级,(2) 在泛化阶段在边缘创建更有效的分心识别的简化特征子集。我们使用支持向量机 (SVM) 生成 10 倍交叉验证 (10-CV) 识别性能度量。我们的实验结果表明,使用所有特征的交叉验证准确率为 94.81%,使用简化特征空间的准确率为 93.01%。SVM-RFE 选择的特征集在减少输入特征空间中的冗余的同时,略微降低了准确性,从而缩短了驾驶员分心状态的早期通知所需的响应时间。