CVAICROct 30, 2025

Security Risk of Misalignment between Text and Image in Multi-modal Model

arXiv:2510.26105v1h-index: 4
Originality Highly original
AI Analysis

This addresses a novel threat to the integrity of multi-modal diffusion models, particularly in image-editing applications, by exposing a previously underexplored vulnerability.

The paper tackles the security risk of misalignment between text and image in multi-modal diffusion models, revealing that this inadequacy allows for generating inappropriate content, and proposes PReMA, an attack that manipulates outputs by modifying input images with fixed prompts, achieving potent efficacy in evaluations.

Despite the notable advancements and versatility of multi-modal diffusion models, such as text-to-image models, their susceptibility to adversarial inputs remains underexplored. Contrary to expectations, our investigations reveal that the alignment between textual and Image modalities in existing diffusion models is inadequate. This misalignment presents significant risks, especially in the generation of inappropriate or Not-Safe-For-Work (NSFW) content. To this end, we propose a novel attack called Prompt-Restricted Multi-modal Attack (PReMA) to manipulate the generated content by modifying the input image in conjunction with any specified prompt, without altering the prompt itself. PReMA is the first attack that manipulates model outputs by solely creating adversarial images, distinguishing itself from prior methods that primarily generate adversarial prompts to produce NSFW content. Consequently, PReMA poses a novel threat to the integrity of multi-modal diffusion models, particularly in image-editing applications that operate with fixed prompts. Comprehensive evaluations conducted on image inpainting and style transfer tasks across various models confirm the potent efficacy of PReMA.

Foundations

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