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simmediumpolicy-learningmetric · varies

HAD: Combining Hierarchical Diffusion with Metric-Decoupled RL for End-to-End Driving

Description

End-to-end planning has emerged as a dominant paradigm for autonomous driving, where recent models often adopt a scoring-selection framework to choose trajectories from a large set of candidates, with diffusion-based decoding showing strong promise. However, directly selecting from the entire candidate space remains difficult to optimize, and Gaussian perturbations used in diffusion often introduce unrealistic trajectories that complicate the denoising process. In addition, for training these mo

Source

http://arxiv.org/abs/2604.03581v1