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How Many Unicorns Are in This Image? A Safety Evaluation Benchmark for Vision LLMs

About

This work focuses on the potential of Vision LLMs (VLLMs) in visual reasoning. Different from prior studies, we shift our focus from evaluating standard performance to introducing a comprehensive safety evaluation suite, covering both out-of-distribution (OOD) generalization and adversarial robustness. For the OOD evaluation, we present two novel VQA datasets, each with one variant, designed to test model performance under challenging conditions. In exploring adversarial robustness, we propose a straightforward attack strategy for misleading VLLMs to produce visual-unrelated responses. Moreover, we assess the efficacy of two jailbreaking strategies, targeting either the vision or language component of VLLMs. Our evaluation of 21 diverse models, ranging from open-source VLLMs to GPT-4V, yields interesting observations: 1) Current VLLMs struggle with OOD texts but not images, unless the visual information is limited; and 2) These VLLMs can be easily misled by deceiving vision encoders only, and their vision-language training often compromise safety protocols. We release this safety evaluation suite at https://github.com/UCSC-VLAA/vllm-safety-benchmark.

Haoqin Tu, Chenhang Cui, Zijun Wang, Yiyang Zhou, Bingchen Zhao, Junlin Han, Wangchunshu Zhou, Huaxiu Yao, Cihang Xie• 2023

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TaskDatasetResultRank
Object Hallucination EvaluationPOPE--
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Image CaptioningCOCO
CIDEr73.8
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Image CaptioningFlickr30K
CIDEr42.1
55
Visual Question AnsweringTextVQA
VQA Accuracy24.6
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Multi-task Adversarial Attack EvaluationCOCO, Flickr30k, TextVQA, VQAv2, POPE
Average SRR49.2
33
Image Captioning RobustnessImage Captioning Dataset
CLIP Score (RN-50)52.9
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