Commentary driving is a technique in which drivers verbalise their observations, assessments and intentions. By speaking out their thoughts, both learning and expert drivers are able to create a better understanding and awareness of their surroundings. In the intelligent vehicle context, automated driving commentary can provide intelligible explanations about driving actions, and thereby assist a driver or an end-user during driving operations in challenging and safety-critical scenarios. In this paper, we conducted a field study in which we deployed a research vehicle in an urban environment to obtain data. While collecting sensor data of the vehicle's surroundings, we obtained driving commentary from a driving instructor using the think-aloud protocol. We analysed the driving commentary and uncovered an explanation style; the driver first announces his observations, announces his plans, and then makes general remarks. He also made counterfactual comments. We successfully demonstrated how factual and counterfactual natural language explanations that follow this style could be automatically generated using a simple tree-based approach. Generated explanations for longitudinal actions (e.g., stop and move) were deemed more intelligible and plausible by human judges compared to lateral actions, such as lane changes. We discussed how our approach can be built on in the future to realise more robust and effective explainability for driver assistance as well as partial and conditional automation of driving functions.
翻译:在智能车辆方面,自动驾驶评注可以提供对驾驶行动的清晰解释,从而帮助驾驶者或最终用户在具有挑战性和安全批评性的情况下进行驾驶作业。在本文中,我们进行了一项实地研究,在城市环境中部署了一个研究工具以获取数据。在收集车辆周围的传感器数据时,我们从驾驶教员处获得了驾驶说明,我们分析了驾驶说明并发现了解释风格;驾驶员首先宣布了自己的观察,宣布了他的计划,然后作了一般性评论。他还作了反事实性评论。我们成功地展示了如何使用简单的基于树木的方法自动生成遵循这种风格的实际和反事实的自然语言解释。在收集车辆周围的传感器数据时,我们从驾驶教员处获得了关于车辆周围的驾驶说明。在收集车辆周围的传感器数据时,我们从驾驶教员那里获得了更清晰和可信的说明。我们分析了驾驶说明,我们分析了驾驶说明并发现了一种解释风格的风格的风格;我们讨论了如何在今后实现更稳健的驾驶能力,即能部分地实现汽车自动化。我们讨论了如何在未来实现更稳健的功能。