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Main Authors: Wang, Zichen, Miao, Hao, Wang, Senzhang, Wang, Renzhi, Wang, Jianxin, Zhang, Jian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.13231
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author Wang, Zichen
Miao, Hao
Wang, Senzhang
Wang, Renzhi
Wang, Jianxin
Zhang, Jian
author_facet Wang, Zichen
Miao, Hao
Wang, Senzhang
Wang, Renzhi
Wang, Jianxin
Zhang, Jian
contents Accurately predicting the trajectory of vehicles is critically important for ensuring safety and reliability in autonomous driving. Although considerable research efforts have been made recently, the inherent trajectory uncertainty caused by various factors including the dynamic driving intends and the diverse driving scenarios still poses significant challenges to accurate trajectory prediction. To address this issue, we propose C2F-TP, a coarse-to-fine denoising framework for uncertainty-aware vehicle trajectory prediction. C2F-TP features an innovative two-stage coarse-to-fine prediction process. Specifically, in the spatial-temporal interaction stage, we propose a spatial-temporal interaction module to capture the inter-vehicle interactions and learn a multimodal trajectory distribution, from which a certain number of noisy trajectories are sampled. Next, in the trajectory refinement stage, we design a conditional denoising model to reduce the uncertainty of the sampled trajectories through a step-wise denoising operation. Extensive experiments are conducted on two real datasets NGSIM and highD that are widely adopted in trajectory prediction. The result demonstrates the effectiveness of our proposal.
format Preprint
id arxiv_https___arxiv_org_abs_2412_13231
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle C2F-TP: A Coarse-to-Fine Denoising Framework for Uncertainty-Aware Trajectory Prediction
Wang, Zichen
Miao, Hao
Wang, Senzhang
Wang, Renzhi
Wang, Jianxin
Zhang, Jian
Robotics
Artificial Intelligence
Machine Learning
Accurately predicting the trajectory of vehicles is critically important for ensuring safety and reliability in autonomous driving. Although considerable research efforts have been made recently, the inherent trajectory uncertainty caused by various factors including the dynamic driving intends and the diverse driving scenarios still poses significant challenges to accurate trajectory prediction. To address this issue, we propose C2F-TP, a coarse-to-fine denoising framework for uncertainty-aware vehicle trajectory prediction. C2F-TP features an innovative two-stage coarse-to-fine prediction process. Specifically, in the spatial-temporal interaction stage, we propose a spatial-temporal interaction module to capture the inter-vehicle interactions and learn a multimodal trajectory distribution, from which a certain number of noisy trajectories are sampled. Next, in the trajectory refinement stage, we design a conditional denoising model to reduce the uncertainty of the sampled trajectories through a step-wise denoising operation. Extensive experiments are conducted on two real datasets NGSIM and highD that are widely adopted in trajectory prediction. The result demonstrates the effectiveness of our proposal.
title C2F-TP: A Coarse-to-Fine Denoising Framework for Uncertainty-Aware Trajectory Prediction
topic Robotics
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2412.13231