CorrectAD: A Self-Correcting Agentic System to Improve End-to-end Planning in Autonomous Driving
DOI:
https://doi.org/10.1609/aaai.v40i10.37718Abstract
End-to-end planning methods are the de-facto standard of the current autonomous driving system, while the robustness of the data-driven approaches suffers due to the notorious long-tail problem (i.e., rare but safety-critical failure cases). In this work, we explore whether recent diffusion-based video generation methods (a.k.a. world models), paired with structured 3D layouts, can enable a fully automated pipeline to self-correct such failure cases. We first introduce an agent to simulate the role of product manager, dubbed PM-Agent, which formulates data requirements to collect data similar to the failure cases. Then, we use a generative model that can simulate both data collection and annotation. However, existing generative models struggle to generate high-fidelity data conditioned on 3D layouts. To address this, we propose DriveSora, which can generate spatiotemporally consistent videos aligned with the 3D annotations requested by PM-Agent. We integrate these components into our self-correcting agentic system, CorrectAD. Importantly, our pipeline is end-to-end model agnostic and can be applied to improve any end-to-end planner. Evaluated on both nuScenes and a more challenging in-house dataset across multiple end-to-end planners, CorrectAD corrects 62.5% and 49.8% of failure cases, reducing collision rates by 39% and 27%, respectively.Downloads
Published
2026-03-14
How to Cite
Ma, E., Zhou, L., Tang, T., Zhang, J., Jiang, J., Zhang, Z., Han, D., Zhan, K., Zhang, X., Lang, X., Sun, H., Zhou, X., Lin, D., & Yu, K. (2026). CorrectAD: A Self-Correcting Agentic System to Improve End-to-end Planning in Autonomous Driving. Proceedings of the AAAI Conference on Artificial Intelligence, 40(10), 7755-7763. https://doi.org/10.1609/aaai.v40i10.37718
Issue
Section
AAAI Technical Track on Computer Vision VII