近距离接触中车辆与行人互动行为的特征:来自三个不同城市的见解

Characterizing vehicle–pedestrian interaction behavior in near misses: Insights from three different cities

Accident Analysis & Prevention · 2026
被引 0
ABS 3

中文导读

使用多智能体马尔可夫博弈模型和逆强化学习,分析了波士顿、开罗和新加坡三个城市中车辆与行人的互动合作程度,发现开罗合作度最高、新加坡最低,且合作与速度负相关,对自动驾驶系统设计有参考价值。

Abstract

• A multi-agent Markov game model is used to measure the degree of cooperation in pedestrian-vehicle interactions. • Inverse Reinforcement Learning is used to capture road users’ utilities. • The study considers data from Boston (US), Cairo (Egypt), and Singapore. • Cairo represented the most cooperative environment, whereas Singapore was the lowest. • The study provides valuable insights into road users’ microscopic interaction behavior in different traffic environments. Improving the safety of vulnerable road users such as pedestrians requires a good understanding of their interaction behavior and their collision avoidance mechanisms in interactions with other road users. Refining this understanding will become even more important in an automated driving environment, where properly representing road users’ evasive actions is required to develop effective collision avoidance systems, especially in mixed and less organized traffic conditions. This study models vehicle–pedestrian interactions using a multi-agent Markov game modeling framework to measure the degree of cooperation as road users interact with each other (e.g., collectively try to avoid a crash). Data from three cities with different traffic environments were used, including Boston (US), Cairo (Egypt), and Singapore. The model adopts an Inverse Reinforcement Learning framework that captures road users’ utilities from their trajectories while accounting for the equilibrium in their actions. Results demonstrate substantial variations in behavior across different cities. For example, Cairo was shown to be the most cooperative environment, whereas Singapore presented the lowest levels of cooperation. Moreover, the level of cooperation is negatively associated with speed variables, which shows that road users were expected to cooperate more when they reduced their speeds. This paper provides valuable insights into road users’ cooperation levels in different environments. This is useful for accurately modeling road users’ actions and incorporating their behaviors in advanced automated driving systems, which should properly reflect local traffic environment conditions.

交通工程行人安全自动驾驶行为建模