cs.AI updates on arXiv.org 07月29日 12:22
CopyJudge: Automated Copyright Infringement Identification and Mitigation in Text-to-Image Diffusion Models
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本文提出CopyJudge,一种利用大视觉语言模型自动识别图像侵权的方法,通过抽象-过滤-比较测试框架和基于多LVLM的辩论来评估侵权可能性,并提出优化侵权提示的缓解策略。

arXiv:2502.15278v2 Announce Type: replace-cross Abstract: Assessing whether AI-generated images are substantially similar to source works is a crucial step in resolving copyright disputes. In this paper, we propose CopyJudge, a novel automated infringement identification framework that leverages large vision-language models (LVLMs) to simulate practical court processes for determining substantial similarity between copyrighted images and those generated by text-to-image diffusion models. Specifically, we employ an abstraction-filtration-comparison test framework based on the multi-LVLM debate to assess the likelihood of infringement and provide detailed judgment rationales. Based on these judgments, we further introduce a general LVLM-based mitigation strategy that automatically optimizes infringing prompts by avoiding sensitive expressions while preserving the non-infringing content. Furthermore, assuming the input noise is controllable, our approach can be enhanced by iteratively exploring non-infringing noise vectors within the diffusion latent space, even without modifying the original prompts. Experimental results show that our automated identification method achieves comparable state-of-the-art performance, while offering superior generalization and interpretability across various forms of infringement, and that our mitigation method more effectively mitigates memorization and IP infringement with a high degree of alignment to the original non-infringing expressions.

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AI图像侵权 视觉语言模型 侵权检测
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