FeaXDrive: Feasibility-aware Trajectory-Centric Diffusion Planning for End-to-End Autonomous Driving
Baoyun Wang, Zhuoren Li, Ming Liu, Xinrui Zhang, Bo Leng + 1 more
TLDR
FeaXDrive introduces a feasibility-aware, trajectory-centric diffusion planning method for autonomous driving, significantly improving trajectory feasibility.
Key contributions
- Proposes a trajectory-centric diffusion formulation for feasibility-aware modeling.
- Integrates adaptive curvature-constrained training for intrinsic geometric and kinematic feasibility.
- Uses drivable-area guidance during reverse diffusion sampling to enhance consistency.
- Applies feasibility-aware GRPO post-training for balanced performance and feasibility.
Why it matters
End-to-end diffusion planning often struggles with physically feasible trajectories, limiting real-world deployment. FeaXDrive tackles this by explicitly modeling trajectory-space feasibility, leading to more reliable and physically grounded autonomous driving systems.
Original Abstract
End-to-end diffusion planning has shown strong potential for autonomous driving, but the physical feasibility of generated trajectories remains insufficiently addressed. In particular, generated trajectories may exhibit local geometric irregularities, violate trajectory-level kinematic constraints, or deviate from the drivable area, indicating that the commonly used noise-centric formulation in diffusion planning is not yet well aligned with the trajectory space where feasibility is more naturally characterized. To address this issue, we propose FeaXDrive, a feasibility-aware trajectory-centric diffusion planning method for end-to-end autonomous driving. The core idea is to treat the clean trajectory as the unified object for feasibility-aware modeling throughout the diffusion process. Built on this trajectory-centric formulation, FeaXDrive integrates adaptive curvature-constrained training to improve intrinsic geometric and kinematic feasibility, drivable-area guidance within reverse diffusion sampling to enhance consistency with the drivable area, and feasibility-aware GRPO post-training to further improve planning performance while balancing trajectory-space feasibility. Experiments on the NAVSIM benchmark show that FeaXDrive achieves strong closed-loop planning performance while substantially improving trajectory-space feasibility. These findings highlight the importance of explicitly modeling trajectory-space feasibility in end-to-end diffusion planning and provide a step toward more reliable and physically grounded autonomous driving planners.
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