DriveFuture: Future-Aware Latent World Models for Autonomous Driving
Yufeng Hong, Xiaotian Zhou, Yingyan Li, Xiangpo Zhou, Lin Liu,Yadan Luo, Shaoqing Xu, Lei Yang, Ziying Song

TL;DR
DriveFuture introduces a future-aware latent world modeling framework for autonomous driving that explicitly conditions current decision-making on predicted future states, achieving state-of-the-art results on NAVSIM benchmarks.
Contribution
The paper proposes a novel approach that conditions current latent states on future states for planning, improving autonomous driving performance.
Findings
Achieves top performance on NAVSIM-v2 navhard benchmark with 55.5 EPDMS.
Outperforms previous methods on NAVSIM-v2 navtest with 89.9 EPDMS.
Ranks 1st on NAVSIM-v2 leaderboard as of April 2026.
Abstract
Existing latent world models for autonomous driving have opened a promising path toward future-aware driving intelligence. However, they typically treat future latent states as prediction targets or auxiliary signals, rather than directly conditioning trajectory planning. This can entangle current and future features in latent space. In this work, we propose DriveFuture, a future-aware latent world modeling framework for autonomous driving that explicitly learns planning-oriented foresight by conditioning the current latent state modeling process on future world states. Specifically, during training, the model first predicts future latent world states from the current latent state and ego action, and then refines the prediction against the ground-truth future latent state via cross-attention. The resulting future-aware latent serves as an explicit condition for a diffusion-based…
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