AI2-Active Safety: AI-enabled Interaction-aware Active Safety Analysis with Vehicle Dynamics
AI2-Active Safety: AI-enabled Interaction-aware Active Safety Analysis with Vehicle Dynamics
This paper introduces an AI-enabled, interaction-aware active safety analysis framework that accounts for groupwise vehicle interactions. Specifically, the framework employs a bicycle model-augmented with road gradient considerations-to accurately capture vehicle dynamics. In parallel, a hypergraph-based AI model is developed to predict probabilistic trajectories of ambient traffic. By integrating these two components, the framework derives vehicle intra-spacing over a 3D road surface as the solution of a stochastic ordinary differential equation, yielding high-fidelity surrogate safety measures such as time-to-collision (TTC). To demonstrate its effectiveness, the framework is analyzed using stochastic numerical methods comprising 4th-order Runge-Kutta integration and AI inference, generating probability-weighted high-fidelity TTC (HF-TTC) distributions that reflect complex multi-agent maneuvers and behavioral uncertainties. Evaluated with HF-TTC against traditional constant-velocity TTC and non-interaction-aware approaches on highway datasets, the proposed framework offers a systematic methodology for active safety analysis with enhanced potential for improving safety perception in complex traffic environments.
Dominique Lord、Xinyue Ye、Sixu Li、Zihao Li、Keshu Wu、Yang Zhou
公路运输工程自动化技术、自动化技术设备计算技术、计算机技术
Dominique Lord,Xinyue Ye,Sixu Li,Zihao Li,Keshu Wu,Yang Zhou.AI2-Active Safety: AI-enabled Interaction-aware Active Safety Analysis with Vehicle Dynamics[EB/OL].(2025-05-01)[2025-05-24].https://arxiv.org/abs/2505.00322.点此复制
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