UniUncer: Unified Dynamic Static Uncertainty for End to End Driving
Yu Gao, Jijun Wang, Zongzheng Zhang, Anqing Jiang, Yiru Wang, Yuwen Heng, Shuo Wang, Hao Sun, Zhangfeng Hu, Hao Zhao

TL;DR
UniUncer introduces a lightweight, unified uncertainty estimation framework for end-to-end driving that improves safety and reliability by jointly modeling static and dynamic scene uncertainties.
Contribution
It is the first to jointly estimate and incorporate both static and dynamic uncertainties into an end-to-end driving planner with minimal overhead.
Findings
Reduces average L2 trajectory error by 7% on nuScenes.
Improves overall EPDMS by 10.8% on NavsimV2.
Dynamic-agent uncertainty and the uncertainty-aware gate are essential components.
Abstract
End-to-end (E2E) driving has become a cornerstone of both industry deployment and academic research, offering a single learnable pipeline that maps multi-sensor inputs to actions while avoiding hand-engineered modules. However, the reliability of such pipelines strongly depends on how well they handle uncertainty: sensors are noisy, semantics can be ambiguous, and interaction with other road users is inherently stochastic. Uncertainty also appears in multiple forms: classification vs. localization, and, crucially, in both static map elements and dynamic agents. Existing E2E approaches model only static-map uncertainty, leaving planning vulnerable to overconfident and unreliable inputs. We present UniUncer, the first lightweight, unified uncertainty framework that jointly estimates and uses uncertainty for both static and dynamic scene elements inside an E2E planner. Concretely: (1) we…
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