ITPNet: Towards Instantaneous Trajectory Prediction for Autonomous Driving
Rongqing Li, Changsheng Li, Yuhang Li, Hanjie Li, Yi Chen, Dongchun, Ren, Ye Yuan, Guoren Wang

TL;DR
This paper introduces ITPNet, a novel approach for instantaneous trajectory prediction in autonomous driving, capable of predicting future agent trajectories using only two observed locations, enhancing safety in real-time scenarios.
Contribution
The paper proposes a general, plug-and-play framework called ITPNet that predicts unobserved historical trajectories from limited data and integrates noise reduction for improved accuracy.
Findings
Outperforms baseline models on Argoverse and nuScenes datasets.
Compatible with various existing trajectory prediction models.
Effectively predicts future trajectories with only two observed locations.
Abstract
Trajectory prediction of agents is crucial for the safety of autonomous vehicles, whereas previous approaches usually rely on sufficiently long-observed trajectory to predict the future trajectory of the agents. However, in real-world scenarios, it is not realistic to collect adequate observed locations for moving agents, leading to the collapse of most prediction models. For instance, when a moving car suddenly appears and is very close to an autonomous vehicle because of the obstruction, it is quite necessary for the autonomous vehicle to quickly and accurately predict the future trajectories of the car with limited observed trajectory locations. In light of this, we focus on investigating the task of instantaneous trajectory prediction, i.e., two observed locations are available during inference. To this end, we propose a general and plug-and-play instantaneous trajectory prediction…
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