Do Vision-Language Models Leak What They Learn? Adaptive Token-Weighted Model Inversion Attacks
Ngoc-Bao Nguyen, Sy-Tuyen Ho, Koh Jun Hao, Ngai-Man Cheung

TL;DR
This paper systematically investigates the vulnerability of vision-language models to model inversion attacks, introducing a novel adaptive token-weighted attack method that significantly improves image reconstruction from private training data.
Contribution
It presents the first comprehensive analysis of MI attacks on VLMs and proposes SMI-AW, a new adaptive token-weighted attack strategy tailored for these models.
Findings
VLMs are vulnerable to training data leakage via MI attacks
SMI-AW improves image reconstruction effectiveness
Publicly available VLMs are also susceptible to privacy breaches
Abstract
Model inversion (MI) attacks pose significant privacy risks by reconstructing private training data from trained neural networks. While prior studies have primarily examined unimodal deep networks, the vulnerability of vision-language models (VLMs) remains largely unexplored. In this work, we present the first systematic study of MI attacks on VLMs to understand their susceptibility to leaking private visual training data. Our work makes two main contributions. First, tailored to the token-generative nature of VLMs, we introduce a suite of token-based and sequence-based model inversion strategies, providing a comprehensive analysis of VLMs' vulnerability under different attack formulations. Second, based on the observation that tokens vary in their visual grounding, and hence their gradients differ in informativeness for image reconstruction, we propose Sequence-based Model Inversion…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis · Digital Media Forensic Detection
