Reading Between the Pixels: Linking Text-Image Embedding Alignment to Typographic Attack Success on Vision-Language Models
Ravikumar Balakrishnan, Sanket Mendapara, Ankit Garg

TL;DR
This paper investigates how typographic prompt injection attacks exploit visual features in vision-language models, revealing factors like font size and visual transformations that influence attack success and model robustness.
Contribution
It provides an empirical analysis of attack effectiveness across multiple VLMs, linking embedding distances to vulnerability and highlighting model-specific robustness patterns.
Findings
Font size significantly impacts attack success rate.
Text attacks outperform image attacks on some models.
Embedding distance correlates negatively with attack success.
Abstract
We study typographic prompt injection attacks on vision-language models (VLMs), where adversarial text is rendered as images to bypass safety mechanisms, posing a growing threat as VLMs serve as the perceptual backbone of autonomous agents, from browser automation and computer-use systems to camera-equipped embodied agents. In practice, the attack surface is heterogeneous: adversarial text appears at varying font sizes and under diverse visual conditions, while the growing ecosystem of VLMs exhibits substantial variation in vulnerability, complicating defensive approaches. Evaluating 1,000 prompts from SALAD-Bench across four VLMs, namely, GPT-4o, Claude Sonnet 4.5, Mistral-Large-3, and Qwen3-VL-4B-Instruct under varying font sizes (6--28px) and visual transformations (rotation, blur, noise, contrast changes), we find: (1) font size significantly affects attack success rate (ASR), with…
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