Flow-guided Motion Prediction with Semantics and Dynamic Occupancy Grid Maps
Accurate prediction of driving scenes is essential for road safety and autonomous driving. Occupancy Grid Maps (OGMs) are commonly employed for scene prediction due to their structured spatial representation, flexibility across sensor modalities and integration of uncertainty. Recent studies have su...
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Zusammenfassung: | Accurate prediction of driving scenes is essential for road safety and
autonomous driving. Occupancy Grid Maps (OGMs) are commonly employed for scene
prediction due to their structured spatial representation, flexibility across
sensor modalities and integration of uncertainty. Recent studies have
successfully combined OGMs with deep learning methods to predict the evolution
of scene and learn complex behaviours. These methods, however, do not consider
prediction of flow or velocity vectors in the scene. In this work, we propose a
novel multi-task framework that leverages dynamic OGMs and semantic information
to predict both future vehicle semantic grids and the future flow of the scene.
This incorporation of semantic flow not only offers intermediate scene features
but also enables the generation of warped semantic grids. Evaluation on the
real-world NuScenes dataset demonstrates improved prediction capabilities and
enhanced ability of the model to retain dynamic vehicles within the scene. |
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DOI: | 10.48550/arxiv.2407.15675 |