Navigation under uncertainty: Trajectory prediction and occlusion reasoning with switching dynamical systems
Predicting future trajectories of nearby objects, especially under occlusion, is a crucial task in autonomous driving and safe robot navigation. Prior works typically neglect to maintain uncertainty about occluded objects and only predict trajectories of observed objects using high-capacity models s...
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Zusammenfassung: | Predicting future trajectories of nearby objects, especially under occlusion,
is a crucial task in autonomous driving and safe robot navigation. Prior works
typically neglect to maintain uncertainty about occluded objects and only
predict trajectories of observed objects using high-capacity models such as
Transformers trained on large datasets. While these approaches are effective in
standard scenarios, they can struggle to generalize to the long-tail,
safety-critical scenarios. In this work, we explore a conceptual framework
unifying trajectory prediction and occlusion reasoning under the same class of
structured probabilistic generative model, namely, switching dynamical systems.
We then present some initial experiments illustrating its capabilities using
the Waymo open dataset. |
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DOI: | 10.48550/arxiv.2410.10653 |