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VLM-RobustBench: A Comprehensive Benchmark for Robustness of Vision-Language Models

arXiv:2603.06148v16 citationsh-index: 9
Predicted impact top 17% in CV · last 90 daysOriginality Synthesis-oriented
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This work addresses the robustness gap in vision-language models for researchers and practitioners, providing a comprehensive benchmark that is incremental in scope.

The paper tackled the problem of evaluating the robustness of vision-language models under real-world image distortions, finding that current models are semantically strong but spatially fragile, with geometric distortions causing accuracy drops of up to 34 percentage points.

Vision-language models (VLMs) achieve strong performance on standard, high-quality datasets, but we still do not fully understand how they perform under real-world image distortions. We present VLM-RobustBench, a benchmark spanning 49 augmentation types across noise, blur, weather, digital, and geometric perturbations, evaluated under graded severities (low/mid/high) and binary transforms, yielding 133 corrupted settings. We evaluate VLMs from four families (Qwen, InternVL, Molmo, Gemma) on two complementary benchmarks: MMBench (visually grounded) and MMMU-Pro (reasoning-oriented). Our results reveal that visual severity is a weak predictor of difficulty: low-severity spatial perturbations often degrade performance more than visually severe photometric corruptions. In particular, low-severity glass_blur reduces MMBench accuracy by about 8 pp on average across models, while the largest drops arise from resampling and geometric distortions (e.g., upsample, elastic_transform), reaching up to 34 pp. Overall, our findings suggest current VLMs are semantically strong but spatially fragile, motivating the definition of novel robustness evaluation protocols and training regimes that emphasize resampling and geometric invariances.

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