Interactive Trajectory Prediction Using a Driving Risk Map-Integrated Deep Learning Method for Surrounding Vehicles on Highways | IEEE Journals & Magazine | IEEE Xplore

Interactive Trajectory Prediction Using a Driving Risk Map-Integrated Deep Learning Method for Surrounding Vehicles on Highways


Abstract:

Accurate trajectory prediction of surrounding vehicles is vital for automated vehicles to achieve high-level driving safety in complex situations. However, most state-of-...Show More

Abstract:

Accurate trajectory prediction of surrounding vehicles is vital for automated vehicles to achieve high-level driving safety in complex situations. However, most state-of-the-art approaches for multi-vehicle trajectory prediction ignore vehicle motion uncertainty caused by different driving styles. Moreover, the interrelationship between the vehicle and the environment is seldom considered. To address the above problems, this paper proposes a driving risk map-integrated deep learning (DRM-DL) method for interactive trajectory prediction of surrounding vehicles, which comprehensively considers the motion uncertainty, trajectory intention uncertainty and interactions among vehicles, lane lines and road boundaries. Specifically, we adopt a conditional variational autoencoder (CVAE) to generate the candidate trajectories, in which the motion uncertainty is considered using a conditional Gaussian distribution. Furthermore, a driving risk map is constructed to realize a unified and interpretable representation of vehicle-vehicle and vehicle-environment interactions. The probability of each candidate trajectory is assigned using a trajectory probability model and a random selection is adopted to select a guided trajectory, which simulates the driver’s trajectory intention uncertainty. Finally, a relearning module is designed to obtain the precise trajectory prediction for surrounding vehicles. The proposed method is evaluated on the HighD dataset, and the results demonstrate a more accurate and reliable trajectory prediction for surrounding vehicles compared with state-of-the-art methods.
Published in: IEEE Transactions on Intelligent Transportation Systems ( Volume: 23, Issue: 10, October 2022)
Page(s): 19076 - 19087
Date of Publication: 30 March 2022

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I. Introduction

Automated vehicles are regarded as a promising solution to reduce traffic congestion and improve driving safety. While in mixed traffic scenes, the complexity of the environment requires automated vehicles can not only perceive the environment, but also predict the maneuver and trajectory of surrounding vehicles. With this ability, automated vehicles can achieve better safety performance and high-quality decision-making and planning [1], [2]. Although some literature have well studied the trajectory prediction problem, multi-vehicle trajectory prediction still face two challenges: one is the human drivers have different kinds of driving behaviors and styles, which brings uncertainty in their motion and intention, so it is difficult to make accurate trajectory prediction. The other is that their future movements are affected by the interaction of other agents in the traffic scene, such as the influence of surrounding vehicles (SVs), the guiding effect of lane line and spatial constraints of road boundary. Therefore, it is desired to set up a effective approach to predict surrounding vehicles’ trajectories precisely taking into account uncertainties and interactions.

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