TokenProber: Jailbreaking Text-to-image Models via Fine-grained Word Impact Analysis
Journal:
arXiv
Published Date:
May 11, 2025
Abstract
Text-to-image (T2I) models have significantly advanced in producing
high-quality images. However, such models have the ability to generate images
containing not-safe-for-work (NSFW) content, such as pornography, violence,
political content, and discrimination. To mitigate the risk of generating NSFW
content, refusal mechanisms, i.e., safety checkers, have been developed to
check potential NSFW content. Adversarial prompting techniques have been
developed to evaluate the robustness of the refusal mechanisms. The key
challenge remains to subtly modify the prompt in a way that preserves its
sensitive nature while bypassing the refusal mechanisms. In this paper, we
introduce TokenProber, a method designed for sensitivity-aware differential
testing, aimed at evaluating the robustness of the refusal mechanisms in T2I
models by generating adversarial prompts. Our approach is based on the key
observation that adversarial prompts often succeed by exploiting discrepancies
in how T2I models and safety checkers interpret sensitive content. Thus, we
conduct a fine-grained analysis of the impact of specific words within prompts,
distinguishing between dirty words that are essential for NSFW content
generation and discrepant words that highlight the different sensitivity
assessments between T2I models and safety checkers. Through the
sensitivity-aware mutation, TokenProber generates adversarial prompts, striking
a balance between maintaining NSFW content generation and evading detection.
Our evaluation of TokenProber against 5 safety checkers on 3 popular T2I
models, using 324 NSFW prompts, demonstrates its superior effectiveness in
bypassing safety filters compared to existing methods (e.g., 54%+ increase on
average), highlighting TokenProber's ability to uncover robustness issues in
the existing refusal mechanisms.