To make safe transitions from autonomous to manual control, a vehicle must have a representation of the awareness of driver state; two metrics which quantify this state are the Observable Readiness Index and Takeover Time. In this work, we show that machine learning models which predict these two metrics are robust to multiple camera views, expanding from the limited view angles in prior research. Importantly, these models take as input feature vectors corresponding to hand location and activity as well as gaze location, and we explore the tradeoffs of different views in generating these feature vectors. Further, we introduce two metrics to evaluate the quality of control transitions following the takeover event (the maximal lateral deviation and velocity deviation) and compute correlations of these post-takeover metrics to the pre-takeover predictive metrics.
翻译:为了安全地从自主控制向人工控制过渡,车辆必须代表驱动器状态的意识;两种量化该状态的衡量标准是可观察性准备指数和接管时间。在这项工作中,我们显示,预测这两个指标的机器学习模型从以往研究的有限角度向多个摄像视图进行扩展。重要的是,这些模型采用与手位和活动以及视景位置相对应的输入要素矢量,我们探索产生这些特性矢量的不同观点之间的取舍。此外,我们采用两种衡量标准来评估接管事件后控制过渡的质量(最大横向偏差和速度偏差),并计算这些接管后指标与接管前预测指标的关联性。