CVAIMar 3

Conditioned Activation Transport for T2I Safety Steering

arXiv:2603.03163v11 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses safety issues in T2I models for users and platforms, representing an incremental improvement over existing activation steering methods.

The paper tackles the problem of unsafe and toxic content generation in Text-to-Image models by proposing Conditioned Activation Transport (CAT), a framework that reduces Attack Success Rate while maintaining image fidelity compared to unsteered generations.

Despite their impressive capabilities, current Text-to-Image (T2I) models remain prone to generating unsafe and toxic content. While activation steering offers a promising inference-time intervention, we observe that linear activation steering frequently degrades image quality when applied to benign prompts. To address this trade-off, we first construct SafeSteerDataset, a contrastive dataset containing 2300 safe and unsafe prompt pairs with high cosine similarity. Leveraging this data, we propose Conditioned Activation Transport (CAT), a framework that employs a geometry-based conditioning mechanism and nonlinear transport maps. By conditioning transport maps to activate only within unsafe activation regions, we minimize interference with benign queries. We validate our approach on two state-of-the-art architectures: Z-Image and Infinity. Experiments demonstrate that CAT generalizes effectively across these backbones, significantly reducing Attack Success Rate while maintaining image fidelity compared to unsteered generations. Warning: This paper contains potentially offensive text and images.

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