TL;DR
HiDrive is a new comprehensive closed-loop benchmark for autonomous driving that emphasizes rare scenarios, advanced decision-making, and realistic physics to better evaluate real-world readiness.
Contribution
It introduces a diverse set of long-tail scenarios, expands evaluation metrics to include moral and legal reasoning, and provides a more realistic physics-based testing environment.
Findings
Includes rare objects and complex traffic situations.
Evaluates rule compliance, moral reasoning, and emergency maneuvers.
Built on an advanced physics engine for realism.
Abstract
End-to-end autonomous driving has witnessed rapid progress, yet existing benchmarks are increasingly saturated, with state-of-the-art models achieving near-perfect scores on widely used open-loop and closed-loop benchmarks. This saturation does not mean that the problem has been solved; instead, it reveals that current benchmarks remain limited in scenario diversity, object variety, and the breadth of driving capabilities they evaluate. In particular, they lack sufficient long-tail scenarios involving rare but safety-critical objects and fail to assess advanced decision-making such as legal compliance, ethical reasoning, and emergency response. To address these gaps, we propose HiDrive, a new closed-loop benchmark for end-to-end autonomous driving that emphasizes long-tail scenarios and a richer evaluation of driving capabilities. HiDrive introduces a diverse set of rare objects and…
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