To maximize safety and driving comfort, autonomous driving systems can benefit from implementing foresighted action choices that take different potential scenario developments into account. While artificial scene prediction methods are making fast progress, an attentive human driver may still be able to identify relevant contextual features which are not adequately considered by the system or for which the human driver may have a lack of trust into the system's capabilities to treat them appropriately. We implement an approach that lets a human driver quickly and intuitively supplement scene predictions to an autonomous driving system by gaze. We illustrate the feasibility of this approach in an existing autonomous driving system running a variety of scenarios in a simulator. Furthermore, a Graphical User Interface (GUI) was designed and integrated to enhance the trust and explainability of the system. The utilization of such cooperatively augmented scenario predictions has the potential to improve a system's foresighted driving abilities and make autonomous driving more trustable, comfortable and personalized.
翻译:为使安全和舒适度最大化,自主驾驶系统可受益于执行考虑到不同潜在情景发展的前瞻性行动选择; 人工场景预测方法正在取得快速进展,但关注人的驾驶员仍可能能够确定系统没有充分考虑或人驾驶员对系统适当处理能力缺乏信任的相关背景特征; 我们采用的方法是让人驾驶员能够快速和直觉地以视方式补充对自主驾驶系统的场景预测; 我们说明这种方法在模拟器中运行各种情景的现有自主驾驶系统中的可行性; 此外,设计并整合了一个图形用户界面(GUI),以加强系统的信任和可解释性; 利用这种合作增强的情景预测,有可能改进系统的前瞻性驾驶能力,使自主驾驶更加可信、舒适和个性化。