Situation awareness (SA) is critical to improving takeover performance during the transition period from automated driving to manual driving. Although many studies measured SA during or after the driving task, few studies have attempted to predict SA in real time in automated driving. In this work, we propose to predict SA during the takeover transition period in conditionally automated driving using eye-tracking and self-reported data. First, a tree ensemble machine learning model, named LightGBM (Light Gradient Boosting Machine), was used to predict SA. Second, in order to understand what factors influenced SA and how, SHAP (SHapley Additive exPlanations) values of individual predictor variables in the LightGBM model were calculated. These SHAP values explained the prediction model by identifying the most important factors and their effects on SA, which further improved the model performance of LightGBM through feature selection. We standardized SA between 0 and 1 by aggregating three performance measures (i.e., placement, distance, and speed estimation of vehicles with regard to the ego-vehicle) of SA in recreating simulated driving scenarios, after 33 participants viewed 32 videos with six lengths between 1 and 20 s. Using only eye-tracking data, our proposed model outperformed other selected machine learning models, having a root-mean-squared error (RMSE) of 0.121, a mean absolute error (MAE) of 0.096, and a 0.719 correlation coefficient between the predicted SA and the ground truth. The code is available at https://github.com/refengchou/Situation-awareness-prediction. Our proposed model provided important implications on how to monitor and predict SA in real time in automated driving using eye-tracking data.
翻译:虽然许多研究在驾驶任务期间或之后测量了SA值,但很少有研究试图在自动驾驶中实时预测SA值。在这项工作中,我们提议在接管过渡期间预测SA值,使用眼睛跟踪和自报数据进行有条件自动驾驶。首先,使用称为LightGBM(LightGBM(LightGGBM)的树联式机器学习模型来预测SA。第二,为了了解影响SA的因素和如何计算LightGBM模型中个人预测或变量的SHAP(SHapley Additive Explectations)值,这些SHAPP(SHapley Additive Explace)试图实时预测SA值。这些SHAP值解释了在接管过渡期间采用使用使用眼睛跟踪和自我报告数据,进一步提高了LightGBM的模型的模型性能。我们用三种性能措施(即:定位、距离和速度估计我们汽车的自我阅读能力)在重新制作模拟驾驶假设时,在33名参与者用32个方向驱动视频,在1至20个地面数据中学习了我们所选的准确数据。