ROAILGFeb 26

Unleashing the Potential of Diffusion Models for End-to-End Autonomous Driving

arXiv:2602.22801v13 citationsh-index: 21
Originality Incremental advance
AI Analysis

This research addresses the challenge of deploying diffusion models for real-world autonomous driving, offering a significant performance gain for developers of self-driving systems.

This study explores the application of diffusion models as planners for End-to-End Autonomous Driving (E2E AD) using extensive real-vehicle data and road testing. The resulting Hyper Diffusion Planner (HDP) achieved a 10x performance improvement over the base model in real-world urban driving scenarios.

Diffusion models have become a popular choice for decision-making tasks in robotics, and more recently, are also being considered for solving autonomous driving tasks. However, their applications and evaluations in autonomous driving remain limited to simulation-based or laboratory settings. The full strength of diffusion models for large-scale, complex real-world settings, such as End-to-End Autonomous Driving (E2E AD), remains underexplored. In this study, we conducted a systematic and large-scale investigation to unleash the potential of the diffusion models as planners for E2E AD, based on a tremendous amount of real-vehicle data and road testing. Through comprehensive and carefully controlled studies, we identify key insights into the diffusion loss space, trajectory representation, and data scaling that significantly impact E2E planning performance. Moreover, we also provide an effective reinforcement learning post-training strategy to further enhance the safety of the learned planner. The resulting diffusion-based learning framework, Hyper Diffusion Planner} (HDP), is deployed on a real-vehicle platform and evaluated across 6 urban driving scenarios and 200 km of real-world testing, achieving a notable 10x performance improvement over the base model. Our work demonstrates that diffusion models, when properly designed and trained, can serve as effective and scalable E2E AD planners for complex, real-world autonomous driving tasks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes