Paper ID: 2504.01941 • Published Apr 2, 2025
End-to-End Driving with Online Trajectory Evaluation via BEV World Model
Yingyan Li, Yuqi Wang, Yang Liu, Jiawei He, Lue Fan, Zhaoxiang Zhang
NLPR, Institute of Automation, Chinese Academy of Sciences•University of Chinese Academy of Sciences
TL;DR
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End-to-end autonomous driving has achieved remarkable progress by integrating
perception, prediction, and planning into a fully differentiable framework.
Yet, to fully realize its potential, an effective online trajectory evaluation
is indispensable to ensure safety. By forecasting the future outcomes of a
given trajectory, trajectory evaluation becomes much more effective. This goal
can be achieved by employing a world model to capture environmental dynamics
and predict future states. Therefore, we propose an end-to-end driving
framework WoTE, which leverages a BEV World model to predict future BEV states
for Trajectory Evaluation. The proposed BEV world model is latency-efficient
compared to image-level world models and can be seamlessly supervised using
off-the-shelf BEV-space traffic simulators. We validate our framework on both
the NAVSIM benchmark and the closed-loop Bench2Drive benchmark based on the
CARLA simulator, achieving state-of-the-art performance. Code is released at
this https URL
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