Efficient Trajectory Forecasting and Generation with Conditional Flow Matching
Trajectory prediction and generation are crucial for autonomous robots in dynamic environments. While prior research has typically focused on either prediction or generation, our approach unifies these tasks to provide a versatile framework and achieve state-of-the-art performance. While diffusion m...
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Zusammenfassung: | Trajectory prediction and generation are crucial for autonomous robots in
dynamic environments. While prior research has typically focused on either
prediction or generation, our approach unifies these tasks to provide a
versatile framework and achieve state-of-the-art performance. While diffusion
models excel in trajectory generation, their iterative sampling process is
computationally intensive, hindering robotic systems' dynamic capabilities. We
introduce Trajectory Conditional Flow Matching (T-CFM), a novel approach using
flow matching techniques to learn a solver time-varying vector field for
efficient, fast trajectory generation. T-CFM demonstrates effectiveness in
adversarial tracking, real-world aircraft trajectory forecasting, and
long-horizon planning, outperforming state-of-the-art baselines with 35% higher
predictive accuracy and 142% improved planning performance. Crucially, T-CFM
achieves up to 100$\times$ speed-up compared to diffusion models without
sacrificing accuracy, enabling real-time decision making in robotics. Codebase:
https://github.com/CORE-Robotics-Lab/TCFM |
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DOI: | 10.48550/arxiv.2403.10809 |