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Graph and Recurrent Neural Network-based Vehicle Trajectory Prediction For Highway Driving

Xiaoyu Mo, Yang Xing, Chen Lv

202175 citationsDOI

Abstract

Integrating trajectory prediction to the decision-making and planning modules of modular autonomous driving systems is expected to improve the safety and efficiency of self-driving vehicles. However, a vehicle's future trajectory prediction is a challenging task since it is affected by the social interactive behaviors of neighboring vehicles, and the number of neighboring vehicles can vary in different situations. This work proposes a GNN-RNN based Encoder-Decoder network for interaction-aware trajectory prediction, where vehicles' dynamics features are extracted from their historical tracks using RNN, and the inter-vehicular interaction is represented by a directed graph and encoded using a GNN. The parallelism of GNN implies the proposed method's potential to predict multi-vehicular trajectories simultaneously. Evaluation on the dataset extracted from the NGSIM US-101 dataset shows that the proposed model is able to predict a target vehicle's trajectory in situations with a variable number of surrounding vehicles.

Topics & Concepts

TrajectoryComputer scienceModular designGraphVehicle dynamicsRecurrent neural networkArtificial intelligenceEncoderArtificial neural networkTask (project management)Machine learningEngineeringTheoretical computer scienceOperating systemPhysicsAutomotive engineeringAstronomySystems engineeringAutonomous Vehicle Technology and SafetyTraffic and Road SafetyVideo Surveillance and Tracking Methods