DynFlowDrive: Flow-Based Dynamic World Modeling for Autonomous Driving
arXiv cs.CV / 3/23/2026
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Key Points
- DynFlowDrive introduces a latent world model with flow-based dynamics to predict how scene states evolve under different driving actions, addressing shortcomings of appearance generation or deterministic regression approaches.
- It uses a rectifiedflow-based velocity field to describe how the scene changes, enabling progressive prediction of future latent states.
- The approach includes a stability-aware multi-mode trajectory selection strategy that evaluates candidate trajectories by the stability of the induced scene transitions.
- Experiments on nuScenes and NavSim demonstrate consistent improvements across diverse driving frameworks without additional inference overhead, and the authors plan to release the source code on GitHub.
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