Probabilistic Risk Metric for Highway Driving Leveraging Multi-Modal Trajectory Predictions

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Abstract

Road traffic safety has attracted increasing research attention, in particular in the current transition from human-driven vehicles to autonomous vehicles. Surrogate measures of safety are widely used to assess traffic safety but they typically ignore motion uncertainties and are inflexible in dealing with two-dimensional motion. Meanwhile, learning-based lane-change and trajectory prediction models have shown potential to provide accurate prediction results. We therefore propose a prediction-based driving risk metric for two-dimensional motion on multi-lane highways, expressed by the maximum risk value over different time instants within a prediction horizon. At each time instant, the risk of the vehicle is estimated as the sum of weighted risks over each mode in a finite set of lane-change maneuver possibilities. Under each maneuver mode, the risk is calculated as the product of three factors: lane-change maneuver mode probability, collision probability and expected crash severity. The three factors are estimated leveraging two-stage multi-modal trajectory predictions for surrounding vehicles: first a lane-change intention prediction module is invoked to provide lane-change maneuver mode possibilities, and then the mode possibilities are used as partial input for a multi-modal trajectory prediction module. Working with the empirical trajectory dataset highD and simulated highway scenarios, the proposed two-stage model achieves superior performance compared to a state-of-the-art prediction model. The proposed risk metric is computationally efficient for real-time applications, and effective to identify potential crashes earlier thanks to the employed prediction model.

Original languageEnglish
Pages (from-to)19399-19412
JournalIEEE Transactions on Intelligent Transportation Systems
Volume23
Issue number10
DOIs
Publication statusPublished - 2022

Keywords

  • Accidents
  • Computational modeling
  • Lane-change intention prediction
  • Measurement
  • Predictive models
  • probabilistic collision calculation
  • risk assessment
  • Safety
  • Trajectory
  • trajectory prediction.
  • Uncertainty

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