AI RESEARCH
What to Test Next: Interpretable Coverage Gap Discovery in Driving VLMs
arXiv CS.CV
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ArXi:2606.01624v1 Announce Type: new Driving vision-language models (VLMs) must accurately understand scenes across diverse conditions defined by Operational Design Domains (ODDs), yet verification remains sparse: many slices are missing, making empirical failure rates unreliable. We propose SliceScorer, a deterministic scoring rule for missing-slice recommendation that combines (i) an exposure-based coverage prior to prioritize rare, under-tested regions, and (ii) a neighbor-failure prior that propagates risk from similar tested conditions.