Jiangsu Key Laboratory of Urban ITS, School of Transportation, Southeast University, Nanjing 211189, China.
Innovative Transportation Research Institute, Texas Southern University, Houston, TX 77004, USA.
Int J Environ Res Public Health. 2021 Dec 29;19(1):348. doi: 10.3390/ijerph19010348.
Real-time driving behavior identification has a wide range of applications in monitoring driver states and predicting driving risks. In contrast to the traditional approaches that were mostly based on a single data source with poor identification capabilities, this paper innovatively integrates driver expression into driving behavior identification. First, 12-day online car-hailing driving data were collected in a non-intrusive manner. Then, with vehicle kinematic data and driver expression data as inputs, a stacked Long Short-Term Memory (S-LSTM) network was constructed to identify five kinds of driving behaviors, namely, lane keeping, acceleration, deceleration, turning, and lane changing. The Artificial Neural Network (ANN) and XGBoost algorithms were also employed as a comparison. Additionally, ten sliding time windows of different lengths were introduced to generate driving behavior identification samples. The results show that, using all sources of data yields better results than using the kinematic data only, with the average F1 value improved by 0.041, while the S-LSTM algorithm is better than the ANN and XGBoost algorithms. Furthermore, the optimal time window length is 3.5 s, with an average F1 of 0.877. This study provides an effective method for real-time driving behavior identification, and thereby supports the driving pattern analysis and Advanced Driving Assistance System.
实时驾驶行为识别在监测驾驶员状态和预测驾驶风险方面有广泛的应用。与传统方法主要基于单一数据源且识别能力较差不同,本文创新性地将驾驶员表情纳入驾驶行为识别中。首先,以非侵入方式收集了 12 天的在线打车驾驶数据。然后,以车辆运动学数据和驾驶员表情数据作为输入,构建堆叠长短时记忆网络(S-LSTM)来识别五种驾驶行为,即车道保持、加速、减速、转弯和变道。还采用人工神经网络(ANN)和 XGBoost 算法作为比较。此外,引入了十个不同长度的滑动时间窗口来生成驾驶行为识别样本。结果表明,使用所有数据源的结果优于仅使用运动学数据的结果,平均 F1 值提高了 0.041,而 S-LSTM 算法优于 ANN 和 XGBoost 算法。此外,最佳时间窗口长度为 3.5s,平均 F1 为 0.877。本研究为实时驾驶行为识别提供了一种有效的方法,从而支持驾驶模式分析和高级驾驶辅助系统。