Reachability-Based Confidence-Aware Probabilistic Collision Detection in Highway Driving

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Xinwei Wang - , Queen Mary University of London, Delft University of Technology (Author)
  • Zirui Li - , Beijing Institute of Technology, TUD Dresden University of Technology (Author)
  • Javier Alonso-Mora - , Delft University of Technology (Author)
  • Meng Wang - , Chair of Traffic Process Automation, TUD Dresden University of Technology (Author)

Abstract

Risk assessment is a crucial component of collision warning and avoidance systems for intelligent vehicles. Reachability-based formal approaches have been developed to ensure driving safety to accurately detect potential vehicle collisions. However, they suffer from over-conservatism, potentially resulting in false–positive risk events in complicated real-world applications. In this paper, we combine two reachability analysis techniques, a backward reachable set (BRS) and a stochastic forward reachable set (FRS), and propose an integrated probabilistic collision–detection framework for highway driving. Within this framework, we can first use a BRS to formally check whether a two-vehicle interaction is safe; otherwise, a prediction-based stochastic FRS is employed to estimate the collision probability at each future time step. Thus, the framework can not only identify non-risky events with guaranteed safety but also provide accurate collision risk estimation in safety-critical events. To construct the stochastic FRS, we develop a neural network-based acceleration model for surrounding vehicles and further incorporate a confidence-aware dynamic belief to improve the prediction accuracy. Extensive experiments were conducted to validate the performance of the acceleration prediction model based on naturalistic highway driving data. The efficiency and effectiveness of the framework with infused confidence beliefs were tested in both naturalistic and simulated highway scenarios. The proposed risk assessment framework is promising for real-world applications.

Details

Original languageEnglish
Pages (from-to)90-107
Number of pages18
JournalEngineering
Volume33
Publication statusPublished - Feb 2024
Peer-reviewedYes

External IDs

ORCID /0000-0001-6555-5558/work/171064779

Keywords

Keywords

  • Confidence awareness, Probabilistic acceleration prediction, Probabilistic collision detection, Reachability analysis, Risk assessment