Key Laboratory of Automobile Measurement and Control & Safety, Xihua University, Chengdu 610039, China.
Engineering Research Center of Advanced Energy Saving Driving Technology, Ministry of Education, Chengdu 610031, China.
Sensors (Basel). 2022 Oct 16;22(20):7860. doi: 10.3390/s22207860.
One of the major challenges for autonomous vehicles (AVs) is how to drive in shared pedestrian environments. AVs cannot make their decisions and behaviour human-like or natural when they encounter pedestrians with different crossing intentions. The main reasons for this are the lack of natural driving data and the unclear rationale of the human-driven vehicle and pedestrian interaction. This paper aims to understand the underlying behaviour mechanisms using data of pedestrian-vehicle interactions from a naturalistic driving study (NDS). A naturalistic driving test platform was established to collect motion data of human-driven vehicles and pedestrians. A manual pedestrian intention judgment system was first developed to judge the pedestrian crossing intention at every moment in the interaction process. A total of 98 single pedestrian crossing events of interest were screened from 1274 pedestrian-vehicle interaction events under naturalistic driving conditions. Several performance metrics with quantitative data, including TTC, subjective judgment on pedestrian crossing intention (SJPCI), pedestrian position and crossing direction, and vehicle speed and deceleration were analyzed and applied to evaluate human-driven vehicles' yielding behaviour towards pedestrians. The results show how vehicles avoid pedestrians in different interaction scenarios, which are classified based on vehicle deceleration. The behaviour and intention results are needed by future AVs, to enable AVs to avoid pedestrians more naturally, safely, and smoothly.
自动驾驶汽车(AV)面临的主要挑战之一是如何在共享行人环境中行驶。当自动驾驶汽车遇到具有不同穿行意图的行人时,它们无法像人类一样做出决策和行为,也无法像人类驾驶的车辆一样具有自然的行为。造成这种情况的主要原因是缺乏自然驾驶数据,以及人类驾驶车辆与行人交互的原理不明确。本文旨在通过自然驾驶研究(NDS)中的行人-车辆交互数据来了解其潜在的行为机制。建立了一个自然驾驶测试平台,以收集人类驾驶车辆和行人的运动数据。首先开发了一个手动行人意图判断系统,以判断交互过程中每个时刻的行人穿行意图。从自然驾驶条件下的 1274 个人车交互事件中筛选出 98 个感兴趣的单人穿行事件。分析并应用了一些具有定量数据的性能指标,包括 TTC、行人穿行意图的主观判断(SJPCI)、行人位置和穿行方向以及车辆速度和减速,以评估人类驾驶车辆对行人的避让行为。结果展示了车辆在不同交互场景下如何避让行人,这些场景是根据车辆减速进行分类的。这些行为和意图的结果是未来 AV 所需要的,以便使 AV 能够更自然、更安全、更平稳地避让行人。