ROCVApr 9

Fail2Drive: Benchmarking Closed-Loop Driving Generalization

arXiv:2604.0853586.03 citationsHas Code
Predicted impact top 12% in RO · last 90 daysOriginality Incremental advance
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This addresses the central bottleneck of distribution shift in autonomous driving for researchers, providing a reproducible foundation for benchmarking, though it is incremental as it builds on existing simulators like CARLA.

The authors tackled the problem of poor generalization in closed-loop autonomous driving by introducing Fail2Drive, a benchmark with 200 routes and 17 scenario classes, which revealed an average success-rate drop of 22.8% for state-of-the-art models.

Generalization under distribution shift remains a central bottleneck for closed-loop autonomous driving. Although simulators like CARLA enable safe and scalable testing, existing benchmarks rarely measure true generalization: they typically reuse training scenarios at test time. Success can therefore reflect memorization rather than robust driving behavior. We introduce Fail2Drive, the first paired-route benchmark for closed-loop generalization in CARLA, with 200 routes and 17 new scenario classes spanning appearance, layout, behavioral, and robustness shifts. Each shifted route is matched with an in-distribution counterpart, isolating the effect of the shift and turning qualitative failures into quantitative diagnostics. Evaluating multiple state-of-the-art models reveals consistent degradation, with an average success-rate drop of 22.8\%. Our analysis uncovers unexpected failure modes, such as ignoring objects clearly visible in the LiDAR and failing to learn the fundamental concepts of free and occupied space. To accelerate follow-up work, Fail2Drive includes an open-source toolbox for creating new scenarios and validating solvability via a privileged expert policy. Together, these components establish a reproducible foundation for benchmarking and improving closed-loop driving generalization. We open-source all code, data, and tools at https://github.com/autonomousvision/fail2drive .

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