CVAICRAug 1, 2025

Wukong Framework for Not Safe For Work Detection in Text-to-Image systems

arXiv:2508.00591v12 citationsh-index: 3
Originality Incremental advance
AI Analysis

This addresses the need for efficient and accurate external safeguarding in AI-generated content to prevent violations of community guidelines, though it is incremental as it builds on existing diffusion model architectures.

The paper tackles the problem of detecting Not Safe For Work (NSFW) content in text-to-image generation systems by proposing the Wukong framework, which leverages intermediate outputs from early denoising steps and pre-trained cross-attention parameters to achieve comparable accuracy to image filters with much greater efficiency.

Text-to-Image (T2I) generation is a popular AI-generated content (AIGC) technology enabling diverse and creative image synthesis. However, some outputs may contain Not Safe For Work (NSFW) content (e.g., violence), violating community guidelines. Detecting NSFW content efficiently and accurately, known as external safeguarding, is essential. Existing external safeguards fall into two types: text filters, which analyze user prompts but overlook T2I model-specific variations and are prone to adversarial attacks; and image filters, which analyze final generated images but are computationally costly and introduce latency. Diffusion models, the foundation of modern T2I systems like Stable Diffusion, generate images through iterative denoising using a U-Net architecture with ResNet and Transformer blocks. We observe that: (1) early denoising steps define the semantic layout of the image, and (2) cross-attention layers in U-Net are crucial for aligning text and image regions. Based on these insights, we propose Wukong, a transformer-based NSFW detection framework that leverages intermediate outputs from early denoising steps and reuses U-Net's pre-trained cross-attention parameters. Wukong operates within the diffusion process, enabling early detection without waiting for full image generation. We also introduce a new dataset containing prompts, seeds, and image-specific NSFW labels, and evaluate Wukong on this and two public benchmarks. Results show that Wukong significantly outperforms text-based safeguards and achieves comparable accuracy of image filters, while offering much greater efficiency.

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