ArXiv TLDR

Modular Energy Steering for Safe Text-to-Image Generation with Foundation Models

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2604.02265

Yaoteng Tan, Zikui Cai, M. Salman Asif

cs.CV

TLDR

This paper introduces Modular Energy Steering, an inference-time framework for safe text-to-image generation using frozen foundation models.

Key contributions

  • Inference-time steering framework for safe text-to-image generation.
  • Leverages gradient feedback from frozen foundation models as off-the-shelf supervisory signals.
  • Formulates safety steering as an energy-based sampling problem, enabling modular and training-free control.
  • Achieves state-of-the-art robustness against NSFW benchmarks while preserving generation quality.

Why it matters

Current text-to-image safety methods often degrade quality or scalability. This paper offers a modular, training-free inference-time steering framework using frozen foundation models for robust and scalable safety control.

Original Abstract

Controlling the behavior of text-to-image generative models is critical for safe and practical deployment. Existing safety approaches typically rely on model fine-tuning or curated datasets, which can degrade generation quality or limit scalability. We propose an inference-time steering framework that leverages gradient feedback from frozen pretrained foundation models to guide the generation process without modifying the underlying generator. Our key observation is that vision-language foundation models encode rich semantic representations that can be repurposed as off-the-shelf supervisory signals during generation. By injecting such feedback through clean latent estimates at each sampling step, our method formulates safety steering as an energy-based sampling problem. This design enables modular, training-free safety control that is compatible with both diffusion and flow-matching models and can generalize across diverse visual concepts. Experiments demonstrate state-of-the-art robustness against NSFW red-teaming benchmarks and effective multi-target steering, while preserving high generation quality on benign non-targeted prompts. Our framework provides a principled approach for utilizing foundation models as semantic energy estimators, enabling reliable and scalable safety control for text-to-image generation.

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