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MetaTra: Meta-Learning for Generalized Trajectory Prediction in Unseen Domain

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arxiv 2402.08221 v1 pith:3SE3QT5V submitted 2024-02-13 cs.RO cs.CV

MetaTra: Meta-Learning for Generalized Trajectory Prediction in Unseen Domain

classification cs.RO cs.CV
keywords trajectorypredictionmetatraproposeunseendifferentdomaindomains
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Trajectory prediction has garnered widespread attention in different fields, such as autonomous driving and robotic navigation. However, due to the significant variations in trajectory patterns across different scenarios, models trained in known environments often falter in unseen ones. To learn a generalized model that can directly handle unseen domains without requiring any model updating, we propose a novel meta-learning-based trajectory prediction method called MetaTra. This approach incorporates a Dual Trajectory Transformer (Dual-TT), which enables a thorough exploration of the individual intention and the interactions within group motion patterns in diverse scenarios. Building on this, we propose a meta-learning framework to simulate the generalization process between source and target domains. Furthermore, to enhance the stability of our prediction outcomes, we propose a Serial and Parallel Training (SPT) strategy along with a feature augmentation method named MetaMix. Experimental results on several real-world datasets confirm that MetaTra not only surpasses other state-of-the-art methods but also exhibits plug-and-play capabilities, particularly in the realm of domain generalization.

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  1. Recent Advances in Multi-Agent Human Trajectory Prediction: A Comprehensive Review

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    A review categorizing 2020-2025 deep learning methods for multi-agent human trajectory prediction by architecture, input representations, and strategies, with emphasis on ETH/UCY benchmark evaluations and future challenges.