HorizonDrive: Self-Corrective Autoregressive World Model for Long-horizon Driving Simulation
Conglang Zhang, Yifan Zhan, Qingjie Wang, Zhanpeng Ouyang, Yu Li, Zihao Yang, Xiaoyang Guo, Weiqiang Ren, Qian Zhang, Zhen Dong, Yinqiang Zheng, Wei Yin, Zhengqing Chen

TL;DR
HorizonDrive introduces a self-corrective autoregressive world model for long-horizon driving simulation, enabling stable, real-time, minute-scale AR rollouts with significant improvements over baselines.
Contribution
The paper presents HorizonDrive, a novel anti-drifting training framework that extends autoregressive teachers for unbounded-horizon supervision in driving simulation.
Findings
Reduces FID by 52% on nuScenes
Lowers FVD by 37% on nuScenes
Supports minute-scale AR rollout with bounded memory
Abstract
Closed-loop driving simulation requires real-time interaction beyond short offline clips, pushing current driving world models toward autoregressive (AR) rollout. Existing AR distillation approaches typically rely on frame sinks or student-side degradation training. The former transfers poorly to driving due to fast ego-motion and rapid scene changes, while the latter remains bounded by the teacher's single-pass output length and thus provides only a limited supervision horizon. A natural question is: can the teacher itself be extended via AR rollout to provide unbounded-horizon supervision at bounded memory cost? The key difficulty is that a standard teacher drifts under its own predictions, contaminating the supervision it provides. Our key insight is to make the teacher rollout-capable, ensuring reliable supervision from its own AR rollouts. This is instantiated as HorizonDrive, an…
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