©Plug-in Authorization for Human Content Copyright Protection in Text-to-Image Model
- URL: http://arxiv.org/abs/2404.11962v2
- Date: Thu, 30 Jan 2025 14:46:45 GMT
- Title: ©Plug-in Authorization for Human Content Copyright Protection in Text-to-Image Model
- Authors: Chao Zhou, Huishuai Zhang, Jiang Bian, Weiming Zhang, Nenghai Yu,
- Abstract summary: State-of-the-art models create high-quality content without crediting original creators.
We propose the copyright Plug-in Authorization framework, introducing three operations: addition, extraction, and combination.
Experiments in artist-style replication and cartoon IP recreation demonstrate copyright plug-ins' effectiveness.
- Score: 71.47762442337948
- License:
- Abstract: This paper addresses the contentious issue of copyright infringement in images generated by text-to-image models, sparking debates among AI developers, content creators, and legal entities. State-of-the-art models create high-quality content without crediting original creators, causing concern in the artistic community. To mitigate this, we propose the \copyright Plug-in Authorization framework, introducing three operations: addition, extraction, and combination. Addition involves training a \copyright plug-in for specific copyright, facilitating proper credit attribution. Extraction allows creators to reclaim copyright from infringing models, and combination enables users to merge different \copyright plug-ins. These operations act as permits, incentivizing fair use and providing flexibility in authorization. We present innovative approaches,"Reverse LoRA" for extraction and "EasyMerge" for seamless combination. Experiments in artist-style replication and cartoon IP recreation demonstrate \copyright plug-ins' effectiveness, offering a valuable solution for human copyright protection in the age of generative AIs. The code is available at https://github.com/zc1023/-Plug-in-Authorization.git.
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