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Papers/Leveraging Future Relationship Reasoning for Vehicle Traje...

Leveraging Future Relationship Reasoning for Vehicle Trajectory Prediction

Daehee Park, Hobin Ryu, Yunseo Yang, Jegyeong Cho, Jiwon Kim, Kuk-Jin Yoon

2023-05-24Motion ForecastingPredictionTrajectory Prediction
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Abstract

Understanding the interaction between multiple agents is crucial for realistic vehicle trajectory prediction. Existing methods have attempted to infer the interaction from the observed past trajectories of agents using pooling, attention, or graph-based methods, which rely on a deterministic approach. However, these methods can fail under complex road structures, as they cannot predict various interactions that may occur in the future. In this paper, we propose a novel approach that uses lane information to predict a stochastic future relationship among agents. To obtain a coarse future motion of agents, our method first predicts the probability of lane-level waypoint occupancy of vehicles. We then utilize the temporal probability of passing adjacent lanes for each agent pair, assuming that agents passing adjacent lanes will highly interact. We also model the interaction using a probabilistic distribution, which allows for multiple possible future interactions. The distribution is learned from the posterior distribution of interaction obtained from ground truth future trajectories. We validate our method on popular trajectory prediction datasets: nuScenes and Argoverse. The results show that the proposed method brings remarkable performance gain in prediction accuracy, and achieves state-of-the-art performance in long-term prediction benchmark dataset.

Results

TaskDatasetMetricValueModel
Trajectory PredictionnuScenesMinADE_100.88FRM
Trajectory PredictionnuScenesMinADE_51.18FRM
Trajectory PredictionnuScenesMinFDE_16.59FRM
Trajectory PredictionnuScenesMissRateTopK_2_100.3FRM
Trajectory PredictionnuScenesMissRateTopK_2_50.48FRM
Trajectory PredictionnuScenesOffRoadRate0.02FRM
Autonomous VehiclesArgoverse CVPR 2020DAC (K=6)0.9878FRM
Autonomous VehiclesArgoverse CVPR 2020MR (K=1)0.5728FRM
Autonomous VehiclesArgoverse CVPR 2020MR (K=6)0.143FRM
Autonomous VehiclesArgoverse CVPR 2020brier-minFDE (K=6)1.9365FRM
Autonomous VehiclesArgoverse CVPR 2020minADE (K=1)1.7063FRM
Autonomous VehiclesArgoverse CVPR 2020minADE (K=6)0.8165FRM
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=1)3.7486FRM
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=6)1.2671FRM
Motion ForecastingArgoverse CVPR 2020DAC (K=6)0.9878FRM
Motion ForecastingArgoverse CVPR 2020MR (K=1)0.5728FRM
Motion ForecastingArgoverse CVPR 2020MR (K=6)0.143FRM
Motion ForecastingArgoverse CVPR 2020brier-minFDE (K=6)1.9365FRM
Motion ForecastingArgoverse CVPR 2020minADE (K=1)1.7063FRM
Motion ForecastingArgoverse CVPR 2020minADE (K=6)0.8165FRM
Motion ForecastingArgoverse CVPR 2020minFDE (K=1)3.7486FRM
Motion ForecastingArgoverse CVPR 2020minFDE (K=6)1.2671FRM
Autonomous DrivingArgoverse CVPR 2020DAC (K=6)0.9878FRM
Autonomous DrivingArgoverse CVPR 2020MR (K=1)0.5728FRM
Autonomous DrivingArgoverse CVPR 2020MR (K=6)0.143FRM
Autonomous DrivingArgoverse CVPR 2020brier-minFDE (K=6)1.9365FRM
Autonomous DrivingArgoverse CVPR 2020minADE (K=1)1.7063FRM
Autonomous DrivingArgoverse CVPR 2020minADE (K=6)0.8165FRM
Autonomous DrivingArgoverse CVPR 2020minFDE (K=1)3.7486FRM
Autonomous DrivingArgoverse CVPR 2020minFDE (K=6)1.2671FRM

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