Litcius/Paper detail

I2T: From Intention Decoupling to Vehicular Trajectory Prediction Based on Prioriformer Networks

Yi Zhou, Zhangyun Wang, Nianwen Ning, Zhanqi Jin, Ning Lu, Xuemin Shen

2024IEEE Transactions on Intelligent Transportation Systems13 citationsDOI

Abstract

A reliable driving trajectory prediction of surrounding vehicles is an essential reference for decision-making and safe driving of an autonomous vehicle. Although predicting short-term trajectories can be well achieved, it is still very challenging for long-term prediction of trajectories since the prediction space grows exponentially. In this paper, we propose a novel architecture for trajectory prediction from factored intention estimation (I2T), which decouples the trajectory prediction space into a high-level space for intention estimation and a low-level space for motion prediction. The long-term dependencies between intention cues and future motions during driving are naturally extended to the internal sharing mechanism of I2T, leading to improved performance. Furthermore, we design a Prioriformer model to serve as the backbone network for I2T so that it can accurately capture the long-term dependency couplings related to the task of intention estimation or motion prediction. Prioriformer model adopts a personalized normalization method, which facilitates learning latent representations of long-term features and avoids getting stuck on local optimum. A designed multi-scale fusion encoder extracts features from various receptive fields and then learns richer information from the representation subspaces. An efficient non-autoregressive decoder reduces the pressure in long-term prediction of trajectories while avoiding cumulative errors. Experiments on three real-world motion datasets show that I2T can significantly outperform the state-of-the-art.

Topics & Concepts

TrajectoryDecoupling (probability)Computer scienceEngineeringPhysicsControl engineeringAstronomyTraffic Prediction and Management TechniquesAutonomous Vehicle Technology and SafetyVehicular Ad Hoc Networks (VANETs)