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VModA: An Effective Framework for Adaptive NSFW Image Moderation

29 May 2025
Han Bao
Qinying Wang
Zhi Chen
Qingming Li
Xuhong Zhang
Changjiang Li
Zonghui Wang
Shouling Ji
Wenzhi Chen
ArXiv (abs)PDFHTML
Main:14 Pages
12 Figures
Bibliography:2 Pages
7 Tables
Appendix:3 Pages
Abstract

Not Safe/Suitable for Work (NSFW) content is rampant on social networks and poses serious harm to citizens, especially minors. Current detection methods mainly rely on deep learning-based image recognition and classification. However, NSFW images are now presented in increasingly sophisticated ways, often using image details and complex semantics to obscure their true nature or attract more views. Although still understandable to humans, these images often evade existing detection methods, posing a significant threat. Further complicating the issue, varying regulations across platforms and regions create additional challenges for effective moderation, leading to detection bias and reduced accuracy. To address this, we propose VModA, a general and effective framework that adapts to diverse moderation rules and handles complex, semantically rich NSFW content across categories. Experimental results show that VModA significantly outperforms existing methods, achieving up to a 54.3% accuracy improvement across NSFW types, including those with complex semantics. Further experiments demonstrate that our method exhibits strong adaptability across categories, scenarios, and base VLMs. We also identified inconsistent and controversial label samples in public NSFW benchmark datasets, re-annotated them, and submitted corrections to the original maintainers. Two datasets have confirmed the updates so far. Additionally, we evaluate VModA in real-world scenarios to demonstrate its practical effectiveness.

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@article{bao2025_2505.23386,
  title={ VModA: An Effective Framework for Adaptive NSFW Image Moderation },
  author={ Han Bao and Qinying Wang and Zhi Chen and Qingming Li and Xuhong Zhang and Changjiang Li and Zonghui Wang and Shouling Ji and Wenzhi Chen },
  journal={arXiv preprint arXiv:2505.23386},
  year={ 2025 }
}
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