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Shadowcast: Stealthy Data Poisoning Attacks Against Vision-Language Models

About

Vision-Language Models (VLMs) excel in generating textual responses from visual inputs, but their versatility raises security concerns. This study takes the first step in exposing VLMs' susceptibility to data poisoning attacks that can manipulate responses to innocuous, everyday prompts. We introduce Shadowcast, a stealthy data poisoning attack where poison samples are visually indistinguishable from benign images with matching texts. Shadowcast demonstrates effectiveness in two attack types. The first is a traditional Label Attack, tricking VLMs into misidentifying class labels, such as confusing Donald Trump for Joe Biden. The second is a novel Persuasion Attack, leveraging VLMs' text generation capabilities to craft persuasive and seemingly rational narratives for misinformation, such as portraying junk food as healthy. We show that Shadowcast effectively achieves the attacker's intentions using as few as 50 poison samples. Crucially, the poisoned samples demonstrate transferability across different VLM architectures, posing a significant concern in black-box settings. Moreover, Shadowcast remains potent under realistic conditions involving various text prompts, training data augmentation, and image compression techniques. This work reveals how poisoned VLMs can disseminate convincing yet deceptive misinformation to everyday, benign users, emphasizing the importance of data integrity for responsible VLM deployments. Our code is available at: https://github.com/umd-huang-lab/VLM-Poisoning.

Yuancheng Xu, Jiarui Yao, Manli Shu, Yanchao Sun, Zichu Wu, Ning Yu, Tom Goldstein, Furong Huang• 2024

Related benchmarks

TaskDatasetResultRank
Image CaptioningFlickr30k (test)
CIDEr95.1
103
Image CaptioningFlickr8k (test)
BLEU@437.3
27
Image CaptioningCOCO (test)--
27
Multimodal RecommendationAmazon Sports Few-Shot (test)
HR (Top-5)18.28
12
Multimodal RecommendationAmazon Sports Zero-Shot (test)
HR @50.182
12
Multimodal RecommendationAmazon Clothing Zero-Shot (test)
HR @ 514.05
12
Multimodal RecommendationAmazon Toys Zero-Shot (test)
HR@514.34
12
Visual Question AnsweringOK-VQA 2019
V-Score53.8
12
Multimodal RecommendationAmazon Clothing Few-Shot (test)
HR (Top-5)0.1404
12
Multimodal RecommendationAmazon Toys Few-Shot (test)
HR (Top-5)0.1452
12
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