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Deployable and Generalizable Motion Prediction: Taxonomy, Open Challenges and Future Directions

Deployable and Generalizable Motion Prediction: Taxonomy, Open Challenges and Future Directions

来源:Arxiv_logoArxiv
英文摘要

Motion prediction, the anticipation of future agent states or scene evolution, is rooted in human cognition, bridging perception and decision-making. It enables intelligent systems, such as robots and self-driving cars, to act safely in dynamic, human-involved environments, and informs broader time-series reasoning challenges. With advances in methods, representations, and datasets, the field has seen rapid progress, reflected in quickly evolving benchmark results. Yet, when state-of-the-art methods are deployed in the real world, they often struggle to generalize to open-world conditions and fall short of deployment standards. This reveals a gap between research benchmarks, which are often idealized or ill-posed, and real-world complexity. To address this gap, this survey revisits the generalization and deployability of motion prediction models, with an emphasis on the applications of robotics, autonomous driving, and human motion. We first offer a comprehensive taxonomy of motion prediction methods, covering representations, modeling strategies, application domains, and evaluation protocols. We then study two key challenges: (1) how to push motion prediction models to be deployable to realistic deployment standards, where motion prediction does not act in a vacuum, but functions as one module of closed-loop autonomy stacks - it takes input from the localization and perception, and informs downstream planning and control. 2) how to generalize motion prediction models from limited seen scenarios/datasets to the open-world settings. Throughout the paper, we highlight critical open challenges to guide future work, aiming to recalibrate the community's efforts, fostering progress that is not only measurable but also meaningful for real-world applications.

Letian Wang、Marc-Antoine Lavoie、Sandro Papais、Barza Nisar、Yuxiao Chen、Wenhao Ding、Boris Ivanovic、Hao Shao、Abulikemu Abuduweili、Evan Cook、Yang Zhou、Peter Karkus、Jiachen Li、Changliu Liu、Marco Pavone、Steven Waslander

自动化技术、自动化技术设备计算技术、计算机技术

Letian Wang,Marc-Antoine Lavoie,Sandro Papais,Barza Nisar,Yuxiao Chen,Wenhao Ding,Boris Ivanovic,Hao Shao,Abulikemu Abuduweili,Evan Cook,Yang Zhou,Peter Karkus,Jiachen Li,Changliu Liu,Marco Pavone,Steven Waslander.Deployable and Generalizable Motion Prediction: Taxonomy, Open Challenges and Future Directions[EB/OL].(2025-05-13)[2025-06-18].https://arxiv.org/abs/2505.09074.点此复制

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