five

PHANTOM

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Zenodo2026-05-07 更新2026-05-26 收录
下载链接:
https://zenodo.org/doi/10.5281/zenodo.20068443
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资源简介:
We introduce a large‑scale, open‑source dataset of pre‑generated adversarial attacks for vision–language models (VLMs). The dataset is designed to be diverse, representative, and practical, extending existing benchmarks by covering $10$ high‑level categories and $55$ subcategories of harmful intents. Our primary goal is to make adversarial data accessible to the research community, given the computational cost and complexity of generating large numbers of attacks.The dataset comprises  27'365 adversarial samples, generated using state‑of‑the‑art attack strategies from recent literature. Our work complements existing efforts by consolidating and extending prior benchmarks from multiple established sources, resulting in 7'826 intents, and introduce an additional category to broaden coverage. This provides realistic evaluation resources for studying model robustness and alignment.Our dataset intends to enable researchers and practitioners to systematically evaluate the robustness and safety of VLMs, fine‑tune attack‑generation models, and develop or stress‑test defensive guardrails under diverse adversarial conditions. By releasing this resource, we aim to lower the barrier to adversarial research and foster more reproducible, comprehensive, and comparable evaluations of VLM safety.
提供机构:
Zenodo
创建时间:
2026-05-07
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